def _compute_attribution_batch_helper_evaluate(
        self,
        model: Module,
        inputs: TensorOrTupleOfTensorsGeneric,
        baselines: Union[None, Tensor, Tuple[Tensor, ...]] = None,
        target: Union[None, int] = None,
        additional_forward_args: Any = None,
        approximation_method: str = "gausslegendre",
    ) -> None:
        ig = IntegratedGradients(model)
        if not isinstance(inputs, tuple):
            inputs = (inputs, )  # type: ignore
        inputs: Tuple[Tensor, ...]

        if baselines is not None and not isinstance(baselines, tuple):
            baselines = (baselines, )

        if baselines is None:
            baselines = _tensorize_baseline(inputs, _zeros(inputs))

        for internal_batch_size in [None, 10, 20]:
            attributions, delta = ig.attribute(
                inputs,
                baselines,
                additional_forward_args=additional_forward_args,
                method=approximation_method,
                n_steps=100,
                target=target,
                internal_batch_size=internal_batch_size,
                return_convergence_delta=True,
            )
            total_delta = 0.0
            for i in range(inputs[0].shape[0]):
                attributions_indiv, delta_indiv = ig.attribute(
                    tuple(input[i:i + 1] for input in inputs),
                    tuple(baseline[i:i + 1] for baseline in baselines),
                    additional_forward_args=additional_forward_args,
                    method=approximation_method,
                    n_steps=100,
                    target=target,
                    internal_batch_size=internal_batch_size,
                    return_convergence_delta=True,
                )
                total_delta += abs(delta_indiv).sum().item()
                for j in range(len(attributions)):
                    assertTensorAlmostEqual(
                        self,
                        attributions[j][i:i + 1].squeeze(0),
                        attributions_indiv[j].squeeze(0),
                        delta=0.05,
                        mode="max",
                    )
            self.assertAlmostEqual(abs(delta).sum().item(),
                                   total_delta,
                                   delta=0.005)
    def _compute_attribution_batch_helper_evaluate(
            self,
            model,
            inputs,
            baselines=None,
            target=None,
            additional_forward_args=None):
        ig = IntegratedGradients(model)
        if not isinstance(inputs, tuple):
            inputs = (inputs, )

        if baselines is not None and not isinstance(baselines, tuple):
            baselines = (baselines, )

        if baselines is None:
            baselines = _tensorize_baseline(inputs, _zeros(inputs))
        for method in [
                "riemann_right",
                "riemann_left",
                "riemann_middle",
                "riemann_trapezoid",
                "gausslegendre",
        ]:
            for internal_batch_size in [None, 1, 20]:
                attributions, delta = ig.attribute(
                    inputs,
                    baselines,
                    additional_forward_args=additional_forward_args,
                    method=method,
                    n_steps=100,
                    target=target,
                    internal_batch_size=internal_batch_size,
                    return_convergence_delta=True,
                )
                total_delta = 0
                for i in range(inputs[0].shape[0]):
                    attributions_indiv, delta_indiv = ig.attribute(
                        tuple(input[i:i + 1] for input in inputs),
                        tuple(baseline[i:i + 1] for baseline in baselines),
                        additional_forward_args=additional_forward_args,
                        method=method,
                        n_steps=100,
                        target=target,
                        return_convergence_delta=True,
                    )
                    total_delta += abs(delta_indiv).sum().item()
                    for j in range(len(attributions)):
                        assertArraysAlmostEqual(
                            attributions[j][i:i + 1].squeeze(0).tolist(),
                            attributions_indiv[j].squeeze(0).tolist(),
                        )
                self.assertAlmostEqual(abs(delta).sum().item(),
                                       total_delta,
                                       delta=0.005)
示例#3
0
    def attribute(
        self,
        inputs: Union[Tensor, Tuple[Tensor, ...]],
        baselines: BaselineType = None,
        target: TargetType = None,
        additional_forward_args: Any = None,
        return_convergence_delta: bool = False,
        attribute_to_layer_input: bool = False,
        custom_attribution_func: Union[None, Callable[..., Tuple[Tensor,
                                                                 ...]]] = None,
    ) -> Union[Tensor, Tuple[Tensor, ...], Tuple[Union[Tensor, Tuple[
            Tensor, ...]], Tensor]]:
        r"""
        Args:

            inputs (tensor or tuple of tensors):  Input for which layer
                        attributions are computed. If forward_func takes a
                        single tensor as input, a single input tensor should be
                        provided. If forward_func takes multiple tensors as input,
                        a tuple of the input tensors should be provided. It is
                        assumed that for all given input tensors, dimension 0
                        corresponds to the number of examples (aka batch size),
                        and if multiple input tensors are provided, the examples
                        must be aligned appropriately.
            baselines (scalar, tensor, tuple of scalars or tensors, optional):
                        Baselines define reference samples that are compared with
                        the inputs. In order to assign attribution scores DeepLift
                        computes the differences between the inputs/outputs and
                        corresponding references.
                        Baselines can be provided as:

                        - a single tensor, if inputs is a single tensor, with
                          exactly the same dimensions as inputs or the first
                          dimension is one and the remaining dimensions match
                          with inputs.

                        - a single scalar, if inputs is a single tensor, which will
                          be broadcasted for each input value in input tensor.

                        - a tuple of tensors or scalars, the baseline corresponding
                          to each tensor in the inputs' tuple can be:

                          - either a tensor with matching dimensions to
                            corresponding tensor in the inputs' tuple
                            or the first dimension is one and the remaining
                            dimensions match with the corresponding
                            input tensor.

                          - or a scalar, corresponding to a tensor in the
                            inputs' tuple. This scalar value is broadcasted
                            for corresponding input tensor.
                        In the cases when `baselines` is not provided, we internally
                        use zero scalar corresponding to each input tensor.

                        Default: None
            target (int, tuple, tensor or list, optional):  Output indices for
                        which gradients are computed (for classification cases,
                        this is usually the target class).
                        If the network returns a scalar value per example,
                        no target index is necessary.
                        For general 2D outputs, targets can be either:

                        - a single integer or a tensor containing a single
                          integer, which is applied to all input examples

                        - a list of integers or a 1D tensor, with length matching
                          the number of examples in inputs (dim 0). Each integer
                          is applied as the target for the corresponding example.

                        For outputs with > 2 dimensions, targets can be either:

                        - A single tuple, which contains #output_dims - 1
                          elements. This target index is applied to all examples.

                        - A list of tuples with length equal to the number of
                          examples in inputs (dim 0), and each tuple containing
                          #output_dims - 1 elements. Each tuple is applied as the
                          target for the corresponding example.

                        Default: None
            additional_forward_args (any, optional): If the forward function
                        requires additional arguments other than the inputs for
                        which attributions should not be computed, this argument
                        can be provided. It must be either a single additional
                        argument of a Tensor or arbitrary (non-tuple) type or a tuple
                        containing multiple additional arguments including tensors
                        or any arbitrary python types. These arguments are provided to
                        forward_func in order, following the arguments in inputs.
                        Note that attributions are not computed with respect
                        to these arguments.
                        Default: None
            return_convergence_delta (bool, optional): Indicates whether to return
                        convergence delta or not. If `return_convergence_delta`
                        is set to True convergence delta will be returned in
                        a tuple following attributions.
                        Default: False
            attribute_to_layer_input (bool, optional): Indicates whether to
                        compute the attribution with respect to the layer input
                        or output. If `attribute_to_layer_input` is set to True
                        then the attributions will be computed with respect to
                        layer input, otherwise it will be computed with respect
                        to layer output.
                        Note that currently it is assumed that either the input
                        or the output of internal layer, depending on whether we
                        attribute to the input or output, is a single tensor.
                        Support for multiple tensors will be added later.
                        Default: False
            custom_attribution_func (callable, optional): A custom function for
                        computing final attribution scores. This function can take
                        at least one and at most three arguments with the
                        following signature:

                        - custom_attribution_func(multipliers)
                        - custom_attribution_func(multipliers, inputs)
                        - custom_attribution_func(multipliers, inputs, baselines)

                        In case this function is not provided, we use the default
                        logic defined as: multipliers * (inputs - baselines)
                        It is assumed that all input arguments, `multipliers`,
                        `inputs` and `baselines` are provided in tuples of same length.
                        `custom_attribution_func` returns a tuple of attribution
                        tensors that have the same length as the `inputs`.
                        Default: None

        Returns:
            **attributions** or 2-element tuple of **attributions**, **delta**:
            - **attributions** (*tensor* or tuple of *tensors*):
                Attribution score computed based on DeepLift's rescale rule with
                respect to layer's inputs or outputs. Attributions will always be the
                same size as the provided layer's inputs or outputs, depending on
                whether we attribute to the inputs or outputs of the layer.
                If the layer input / output is a single tensor, then
                just a tensor is returned; if the layer input / output
                has multiple tensors, then a corresponding tuple
                of tensors is returned.
            - **delta** (*tensor*, returned if return_convergence_delta=True):
                This is computed using the property that the total sum of
                forward_func(inputs) - forward_func(baselines) must equal the
                total sum of the attributions computed based on DeepLift's
                rescale rule.
                Delta is calculated per example, meaning that the number of
                elements in returned delta tensor is equal to the number of
                of examples in input.
                Note that the logic described for deltas is guaranteed
                when the default logic for attribution computations is used,
                meaning that the `custom_attribution_func=None`, otherwise
                it is not guaranteed and depends on the specifics of the
                `custom_attribution_func`.

        Examples::

            >>> # ImageClassifier takes a single input tensor of images Nx3x32x32,
            >>> # and returns an Nx10 tensor of class probabilities.
            >>> net = ImageClassifier()
            >>> # creates an instance of LayerDeepLift to interpret target
            >>> # class 1 with respect to conv4 layer.
            >>> dl = LayerDeepLift(net, net.conv4)
            >>> input = torch.randn(1, 3, 32, 32, requires_grad=True)
            >>> # Computes deeplift attribution scores for conv4 layer and class 3.
            >>> attribution = dl.attribute(input, target=1)
        """
        inputs = _format_input(inputs)
        baselines = _format_baseline(baselines, inputs)
        gradient_mask = apply_gradient_requirements(inputs)
        _validate_input(inputs, baselines)

        baselines = _tensorize_baseline(inputs, baselines)

        main_model_hooks = []
        try:
            main_model_hooks = self._hook_main_model()

            self.model.apply(lambda mod: self._register_hooks(
                mod, attribute_to_layer_input=attribute_to_layer_input))

            additional_forward_args = _format_additional_forward_args(
                additional_forward_args)
            expanded_target = _expand_target(
                target, 2, expansion_type=ExpansionTypes.repeat)
            wrapped_forward_func = self._construct_forward_func(
                self.model,
                (inputs, baselines),
                expanded_target,
                additional_forward_args,
            )

            def chunk_output_fn(
                    out: TensorOrTupleOfTensorsGeneric) -> Sequence:
                if isinstance(out, Tensor):
                    return out.chunk(2)
                return tuple(out_sub.chunk(2) for out_sub in out)

            gradients, attrs = compute_layer_gradients_and_eval(
                wrapped_forward_func,
                self.layer,
                inputs,
                attribute_to_layer_input=attribute_to_layer_input,
                output_fn=lambda out: chunk_output_fn(out),
            )

            attr_inputs = tuple(map(lambda attr: attr[0], attrs))
            attr_baselines = tuple(map(lambda attr: attr[1], attrs))
            gradients = tuple(map(lambda grad: grad[0], gradients))

            if custom_attribution_func is None:
                if self.multiplies_by_inputs:
                    attributions = tuple(
                        (input - baseline) * gradient
                        for input, baseline, gradient in zip(
                            attr_inputs, attr_baselines, gradients))
                else:
                    attributions = gradients
            else:
                attributions = _call_custom_attribution_func(
                    custom_attribution_func, gradients, attr_inputs,
                    attr_baselines)
        finally:
            # remove hooks from all activations
            self._remove_hooks(main_model_hooks)

        undo_gradient_requirements(inputs, gradient_mask)
        return _compute_conv_delta_and_format_attrs(
            self,
            return_convergence_delta,
            attributions,
            baselines,
            inputs,
            additional_forward_args,
            target,
            cast(Union[Literal[True], Literal[False]],
                 len(attributions) > 1),
        )
示例#4
0
    def attribute(
        self,
        inputs: Union[Tensor, Tuple[Tensor, ...]],
        baselines: Optional[
            Union[Tensor, int, float, Tuple[Union[Tensor, int, float], ...]]
        ] = None,
        target: Optional[
            Union[int, Tuple[int, ...], Tensor, List[Tuple[int, ...]]]
        ] = None,
        additional_forward_args: Any = None,
        n_steps: int = 50,
        method: str = "gausslegendre",
        internal_batch_size: Optional[int] = None,
        return_convergence_delta: bool = False,
        attribute_to_layer_input: bool = False,
    ) -> Union[
        Tensor, Tuple[Tensor, ...], Tuple[Union[Tensor, Tuple[Tensor, ...]], Tensor]
    ]:
        r"""
        This method attributes the output of the model with given target index
        (in case it is provided, otherwise it assumes that output is a
        scalar) to layer inputs or outputs of the model, depending on whether
        `attribute_to_layer_input` is set to True or False, using the approach
        described above.

        In addition to that it also returns, if `return_convergence_delta` is
        set to True, integral approximation delta based on the completeness
        property of integrated gradients.

        Args:

            inputs (tensor or tuple of tensors):  Input for which layer integrated
                        gradients are computed. If forward_func takes a single
                        tensor as input, a single input tensor should be provided.
                        If forward_func takes multiple tensors as input, a tuple
                        of the input tensors should be provided. It is assumed
                        that for all given input tensors, dimension 0 corresponds
                        to the number of examples, and if multiple input tensors
                        are provided, the examples must be aligned appropriately.
            baselines (scalar, tensor, tuple of scalars or tensors, optional):
                        Baselines define the starting point from which integral
                        is computed and can be provided as:

                        - a single tensor, if inputs is a single tensor, with
                            exactly the same dimensions as inputs or the first
                            dimension is one and the remaining dimensions match
                            with inputs.

                        - a single scalar, if inputs is a single tensor, which will
                                be broadcasted for each input value in input tensor.

                        - a tuple of tensors or scalars, the baseline corresponding
                            to each tensor in the inputs' tuple can be:
                            - either a tensor with matching dimensions to
                                corresponding tensor in the inputs' tuple
                                or the first dimension is one and the remaining
                                dimensions match with the corresponding
                                input tensor.
                            - or a scalar, corresponding to a tensor in the
                                inputs' tuple. This scalar value is broadcasted
                                for corresponding input tensor.

                        In the cases when `baselines` is not provided, we internally
                        use zero scalar corresponding to each input tensor.

                        Default: None
            target (int, tuple, tensor or list, optional):  Output indices for
                        which gradients are computed (for classification cases,
                        this is usually the target class).
                        If the network returns a scalar value per example,
                        no target index is necessary.
                        For general 2D outputs, targets can be either:

                        - a single integer or a tensor containing a single
                            integer, which is applied to all input examples

                        - a list of integers or a 1D tensor, with length matching
                            the number of examples in inputs (dim 0). Each integer
                            is applied as the target for the corresponding example.

                        For outputs with > 2 dimensions, targets can be either:

                        - A single tuple, which contains #output_dims - 1
                            elements. This target index is applied to all examples.

                        - A list of tuples with length equal to the number of
                            examples in inputs (dim 0), and each tuple containing
                            #output_dims - 1 elements. Each tuple is applied as the
                            target for the corresponding example.

                        Default: None
            additional_forward_args (any, optional): If the forward function
                        requires additional arguments other than the inputs for
                        which attributions should not be computed, this argument
                        can be provided. It must be either a single additional
                        argument of a Tensor or arbitrary (non-tuple) type or a
                        tuple containing multiple additional arguments including
                        tensors or any arbitrary python types. These arguments
                        are provided to forward_func in order following the
                        arguments in inputs.
                        For a tensor, the first dimension of the tensor must
                        correspond to the number of examples. It will be
                        repeated for each of `n_steps` along the integrated
                        path. For all other types, the given argument is used
                        for all forward evaluations.
                        Note that attributions are not computed with respect
                        to these arguments.
                        Default: None
            n_steps (int, optional): The number of steps used by the approximation
                        method. Default: 50.
            method (string, optional): Method for approximating the integral,
                        one of `riemann_right`, `riemann_left`, `riemann_middle`,
                        `riemann_trapezoid` or `gausslegendre`.
                        Default: `gausslegendre` if no method is provided.
            internal_batch_size (int, optional): Divides total #steps * #examples
                        data points into chunks of size internal_batch_size,
                        which are computed (forward / backward passes)
                        sequentially.
                        For DataParallel models, each batch is split among the
                        available devices, so evaluations on each available
                        device contain internal_batch_size / num_devices examples.
                        If internal_batch_size is None, then all evaluations are
                        processed in one batch.
                        Default: None
            return_convergence_delta (bool, optional): Indicates whether to return
                        convergence delta or not. If `return_convergence_delta`
                        is set to True convergence delta will be returned in
                        a tuple following attributions.
                        Default: False
            attribute_to_layer_input (bool, optional): Indicates whether to
                        compute the attribution with respect to the layer input
                        or output. If `attribute_to_layer_input` is set to True
                        then the attributions will be computed with respect to
                        layer input, otherwise it will be computed with respect
                        to layer output.
                        Note that currently it is assumed that either the input
                        or the output of internal layer, depending on whether we
                        attribute to the input or output, is a single tensor.
                        Support for multiple tensors will be added later.
                        Default: False
            Returns:
                **attributions** or 2-element tuple of **attributions**, **delta**:
                - **attributions** (*tensor* or tuple of *tensors*):
                        Integrated gradients with respect to `layer`'s inputs or
                        outputs. Attributions will always be the same size and
                        dimensionality as the input or output of the given layer,
                        depending on whether we attribute to the inputs or outputs
                        of the layer which is decided by the input flag
                        `attribute_to_layer_input`.
                - **delta** (*tensor*, returned if return_convergence_delta=True):
                        The difference between the total approximated and true
                        integrated gradients. This is computed using the property
                        that the total sum of forward_func(inputs) -
                        forward_func(baselines) must equal the total sum of the
                        integrated gradient.
                        Delta is calculated per example, meaning that the number of
                        elements in returned delta tensor is equal to the number of
                        of examples in inputs.

            Examples::

                >>> # ImageClassifier takes a single input tensor of images Nx3x32x32,
                >>> # and returns an Nx10 tensor of class probabilities.
                >>> # It contains an attribute conv1, which is an instance of nn.conv2d,
                >>> # and the output of this layer has dimensions Nx12x32x32.
                >>> net = ImageClassifier()
                >>> lig = LayerIntegratedGradients(net, net.conv1)
                >>> input = torch.randn(2, 3, 32, 32, requires_grad=True)
                >>> # Computes layer integrated gradients for class 3.
                >>> # attribution size matches layer output, Nx12x32x32
                >>> attribution = lig.attribute(input, target=3)
        """
        inps, baselines = _format_input_baseline(inputs, baselines)
        _validate_input(inps, baselines, n_steps, method)

        baselines = _tensorize_baseline(inps, baselines)
        additional_forward_args = _format_additional_forward_args(
            additional_forward_args
        )

        if self.device_ids is None:
            self.device_ids = getattr(self.forward_func, "device_ids", None)
        inputs_layer, is_layer_tuple = _forward_layer_eval(
            self.forward_func,
            inps,
            self.layer,
            device_ids=self.device_ids,
            additional_forward_args=additional_forward_args,
            attribute_to_layer_input=attribute_to_layer_input,
        )

        baselines_layer, _ = _forward_layer_eval(
            self.forward_func,
            baselines,
            self.layer,
            device_ids=self.device_ids,
            additional_forward_args=additional_forward_args,
            attribute_to_layer_input=attribute_to_layer_input,
        )

        # inputs -> these inputs are scaled
        def gradient_func(
            forward_fn: Callable,
            inputs: Union[Tensor, Tuple[Tensor, ...]],
            target_ind: Optional[
                Union[int, Tuple[int, ...], Tensor, List[Tuple[int, ...]]]
            ] = None,
            additional_forward_args: Any = None,
        ) -> Tuple[Tensor, ...]:
            if self.device_ids is None:
                scattered_inputs = (inputs,)
            else:
                # scatter method does not have a precise enough return type in its
                # stub, so suppress the type warning.
                scattered_inputs = scatter(  # type:ignore
                    inputs, target_gpus=self.device_ids
                )

            scattered_inputs_dict = {
                scattered_input[0].device: scattered_input
                for scattered_input in scattered_inputs
            }

            with torch.autograd.set_grad_enabled(True):

                def layer_forward_hook(module, hook_inputs, hook_outputs=None):
                    device = _extract_device(module, hook_inputs, hook_outputs)
                    if is_layer_tuple:
                        return scattered_inputs_dict[device]
                    return scattered_inputs_dict[device][0]

                if attribute_to_layer_input:
                    hook = self.layer.register_forward_pre_hook(layer_forward_hook)
                else:
                    hook = self.layer.register_forward_hook(layer_forward_hook)

                output = _run_forward(
                    self.forward_func, additional_forward_args, target_ind,
                )
                hook.remove()
                assert output[0].numel() == 1, (
                    "Target not provided when necessary, cannot"
                    " take gradient with respect to multiple outputs."
                )
                # torch.unbind(forward_out) is a list of scalar tensor tuples and
                # contains batch_size * #steps elements
                grads = torch.autograd.grad(torch.unbind(output), inputs)
            return grads

        self.ig.gradient_func = gradient_func
        all_inputs = (
            (inps + additional_forward_args)
            if additional_forward_args is not None
            else inps
        )
        attributions = self.ig.attribute(
            inputs_layer,
            baselines=baselines_layer,
            target=target,
            additional_forward_args=all_inputs,
            n_steps=n_steps,
            method=method,
            internal_batch_size=internal_batch_size,
            return_convergence_delta=False,
        )

        if return_convergence_delta:
            start_point, end_point = baselines, inps
            # computes approximation error based on the completeness axiom
            delta = self.compute_convergence_delta(
                attributions,
                start_point,
                end_point,
                additional_forward_args=additional_forward_args,
                target=target,
            )
            return _format_attributions(is_layer_tuple, attributions), delta
        return _format_attributions(is_layer_tuple, attributions)
示例#5
0
    def attribute(  # type: ignore
        self,
        inputs: TensorOrTupleOfTensorsGeneric,
        baselines: BaselineType = None,
        target: TargetType = None,
        additional_forward_args: Any = None,
        return_convergence_delta: bool = False,
        custom_attribution_func: Union[None, Callable[..., Tuple[Tensor,
                                                                 ...]]] = None,
    ) -> Union[TensorOrTupleOfTensorsGeneric, Tuple[
            TensorOrTupleOfTensorsGeneric, Tensor]]:
        r"""
        Args:

            inputs (tensor or tuple of tensors):  Input for which
                        attributions are computed. If forward_func takes a single
                        tensor as input, a single input tensor should be provided.
                        If forward_func takes multiple tensors as input, a tuple
                        of the input tensors should be provided. It is assumed
                        that for all given input tensors, dimension 0 corresponds
                        to the number of examples (aka batch size), and if
                        multiple input tensors are provided, the examples must
                        be aligned appropriately.
            baselines (scalar, tensor, tuple of scalars or tensors, optional):
                        Baselines define reference samples that are compared with
                        the inputs. In order to assign attribution scores DeepLift
                        computes the differences between the inputs/outputs and
                        corresponding references.
                        Baselines can be provided as:

                        - a single tensor, if inputs is a single tensor, with
                          exactly the same dimensions as inputs or the first
                          dimension is one and the remaining dimensions match
                          with inputs.

                        - a single scalar, if inputs is a single tensor, which will
                          be broadcasted for each input value in input tensor.

                        - a tuple of tensors or scalars, the baseline corresponding
                          to each tensor in the inputs' tuple can be:

                          - either a tensor with matching dimensions to
                            corresponding tensor in the inputs' tuple
                            or the first dimension is one and the remaining
                            dimensions match with the corresponding
                            input tensor.

                          - or a scalar, corresponding to a tensor in the
                            inputs' tuple. This scalar value is broadcasted
                            for corresponding input tensor.

                        In the cases when `baselines` is not provided, we internally
                        use zero scalar corresponding to each input tensor.

                        Default: None
            target (int, tuple, tensor or list, optional):  Output indices for
                        which gradients are computed (for classification cases,
                        this is usually the target class).
                        If the network returns a scalar value per example,
                        no target index is necessary.
                        For general 2D outputs, targets can be either:

                        - a single integer or a tensor containing a single
                          integer, which is applied to all input examples

                        - a list of integers or a 1D tensor, with length matching
                          the number of examples in inputs (dim 0). Each integer
                          is applied as the target for the corresponding example.

                        For outputs with > 2 dimensions, targets can be either:

                        - A single tuple, which contains #output_dims - 1
                          elements. This target index is applied to all examples.

                        - A list of tuples with length equal to the number of
                          examples in inputs (dim 0), and each tuple containing
                          #output_dims - 1 elements. Each tuple is applied as the
                          target for the corresponding example.

                        Default: None
            additional_forward_args (any, optional): If the forward function
                        requires additional arguments other than the inputs for
                        which attributions should not be computed, this argument
                        can be provided. It must be either a single additional
                        argument of a Tensor or arbitrary (non-tuple) type or a tuple
                        containing multiple additional arguments including tensors
                        or any arbitrary python types. These arguments are provided to
                        forward_func in order, following the arguments in inputs.
                        Note that attributions are not computed with respect
                        to these arguments.
                        Default: None
            return_convergence_delta (bool, optional): Indicates whether to return
                        convergence delta or not. If `return_convergence_delta`
                        is set to True convergence delta will be returned in
                        a tuple following attributions.
                        Default: False
            custom_attribution_func (callable, optional): A custom function for
                        computing final attribution scores. This function can take
                        at least one and at most three arguments with the
                        following signature:

                        - custom_attribution_func(multipliers)
                        - custom_attribution_func(multipliers, inputs)
                        - custom_attribution_func(multipliers, inputs, baselines)

                        In case this function is not provided, we use the default
                        logic defined as: multipliers * (inputs - baselines)
                        It is assumed that all input arguments, `multipliers`,
                        `inputs` and `baselines` are provided in tuples of same
                        length. `custom_attribution_func` returns a tuple of
                        attribution tensors that have the same length as the
                        `inputs`.

                        Default: None

        Returns:
            **attributions** or 2-element tuple of **attributions**, **delta**:
            - **attributions** (*tensor* or tuple of *tensors*):
                Attribution score computed based on DeepLift rescale rule with respect
                to each input feature. Attributions will always be
                the same size as the provided inputs, with each value
                providing the attribution of the corresponding input index.
                If a single tensor is provided as inputs, a single tensor is
                returned. If a tuple is provided for inputs, a tuple of
                corresponding sized tensors is returned.
            - **delta** (*tensor*, returned if return_convergence_delta=True):
                This is computed using the property that
                the total sum of forward_func(inputs) - forward_func(baselines)
                must equal the total sum of the attributions computed
                based on DeepLift's rescale rule.
                Delta is calculated per example, meaning that the number of
                elements in returned delta tensor is equal to the number of
                of examples in input.
                Note that the logic described for deltas is guaranteed when the
                default logic for attribution computations is used, meaning that the
                `custom_attribution_func=None`, otherwise it is not guaranteed and
                depends on the specifics of the `custom_attribution_func`.

        Examples::

            >>> # ImageClassifier takes a single input tensor of images Nx3x32x32,
            >>> # and returns an Nx10 tensor of class probabilities.
            >>> net = ImageClassifier()
            >>> dl = DeepLift(net)
            >>> input = torch.randn(2, 3, 32, 32, requires_grad=True)
            >>> # Computes deeplift attribution scores for class 3.
            >>> attribution = dl.attribute(input, target=3)
        """

        # Keeps track whether original input is a tuple or not before
        # converting it into a tuple.
        is_inputs_tuple = _is_tuple(inputs)

        inputs = _format_tensor_into_tuples(inputs)
        baselines = _format_baseline(baselines, inputs)

        gradient_mask = apply_gradient_requirements(inputs)

        _validate_input(inputs, baselines)

        # set hooks for baselines
        warnings.warn(
            """Setting forward, backward hooks and attributes on non-linear
               activations. The hooks and attributes will be removed
            after the attribution is finished""")
        baselines = _tensorize_baseline(inputs, baselines)
        main_model_hooks = []
        try:
            main_model_hooks = self._hook_main_model()

            self.model.apply(self._register_hooks)

            additional_forward_args = _format_additional_forward_args(
                additional_forward_args)

            expanded_target = _expand_target(
                target, 2, expansion_type=ExpansionTypes.repeat)

            wrapped_forward_func = self._construct_forward_func(
                self.model,
                (inputs, baselines),
                expanded_target,
                additional_forward_args,
            )
            gradients = self.gradient_func(wrapped_forward_func, inputs)
            if custom_attribution_func is None:
                if self.multiplies_by_inputs:
                    attributions = tuple((input - baseline) * gradient
                                         for input, baseline, gradient in zip(
                                             inputs, baselines, gradients))
                else:
                    attributions = gradients
            else:
                attributions = _call_custom_attribution_func(
                    custom_attribution_func, gradients, inputs, baselines)
        finally:
            # Even if any error is raised, remove all hooks before raising
            self._remove_hooks(main_model_hooks)

        undo_gradient_requirements(inputs, gradient_mask)
        return _compute_conv_delta_and_format_attrs(
            self,
            return_convergence_delta,
            attributions,
            baselines,
            inputs,
            additional_forward_args,
            target,
            is_inputs_tuple,
        )
    def _compute_attribution_and_evaluate(
        self,
        model: Module,
        inputs: TensorOrTupleOfTensorsGeneric,
        baselines: BaselineType = None,
        target: Union[None, int] = None,
        additional_forward_args: Any = None,
        type: str = "vanilla",
        approximation_method: str = "gausslegendre",
        multiply_by_inputs=True,
    ) -> Tuple[Tensor, ...]:
        r"""
        attrib_type: 'vanilla', 'smoothgrad', 'smoothgrad_sq', 'vargrad'
        """
        ig = IntegratedGradients(model, multiply_by_inputs=multiply_by_inputs)
        self.assertEquals(ig.multiplies_by_inputs, multiply_by_inputs)
        if not isinstance(inputs, tuple):
            inputs = (inputs,)  # type: ignore
        inputs: Tuple[Tensor, ...]

        if baselines is not None and not isinstance(baselines, tuple):
            baselines = (baselines,)

        if baselines is None:
            baselines = _tensorize_baseline(inputs, _zeros(inputs))

        if type == "vanilla":
            attributions, delta = ig.attribute(
                inputs,
                baselines,
                additional_forward_args=additional_forward_args,
                method=approximation_method,
                n_steps=500,
                target=target,
                return_convergence_delta=True,
            )
            model.zero_grad()
            attributions_without_delta, delta = ig.attribute(
                inputs,
                baselines,
                additional_forward_args=additional_forward_args,
                method=approximation_method,
                n_steps=500,
                target=target,
                return_convergence_delta=True,
            )
            model.zero_grad()
            self.assertEqual([inputs[0].shape[0]], list(delta.shape))
            delta_external = ig.compute_convergence_delta(
                attributions,
                baselines,
                inputs,
                target=target,
                additional_forward_args=additional_forward_args,
            )
            assertArraysAlmostEqual(delta, delta_external, 0.0)
        else:
            nt = NoiseTunnel(ig)
            n_samples = 5
            attributions, delta = nt.attribute(
                inputs,
                nt_type=type,
                nt_samples=n_samples,
                stdevs=0.00000002,
                baselines=baselines,
                target=target,
                additional_forward_args=additional_forward_args,
                method=approximation_method,
                n_steps=500,
                return_convergence_delta=True,
            )
            with self.assertWarns(DeprecationWarning):
                attributions_without_delta = nt.attribute(
                    inputs,
                    nt_type=type,
                    n_samples=n_samples,
                    stdevs=0.00000002,
                    baselines=baselines,
                    target=target,
                    additional_forward_args=additional_forward_args,
                    method=approximation_method,
                    n_steps=500,
                )
            self.assertEquals(nt.multiplies_by_inputs, multiply_by_inputs)
            self.assertEqual([inputs[0].shape[0] * n_samples], list(delta.shape))

        for input, attribution in zip(inputs, attributions):
            self.assertEqual(attribution.shape, input.shape)
        if multiply_by_inputs:
            self.assertTrue(all(abs(delta.numpy().flatten()) < 0.07))

        # compare attributions retrieved with and without
        # `return_convergence_delta` flag
        for attribution, attribution_without_delta in zip(
            attributions, attributions_without_delta
        ):
            assertTensorAlmostEqual(
                self, attribution, attribution_without_delta, delta=0.05
            )

        return cast(Tuple[Tensor, ...], attributions)
示例#7
0
    def compute_convergence_delta(
        self,
        attributions: Union[Tensor, Tuple[Tensor, ...]],
        start_point: Union[None, int, float, Tensor,
                           Tuple[Union[int, float, Tensor], ...]],
        end_point: Union[Tensor, Tuple[Tensor, ...]],
        target: TargetType = None,
        additional_forward_args: Any = None,
    ) -> Tensor:
        r"""
        Here we provide a specific implementation for `compute_convergence_delta`
        which is based on a common property among gradient-based attribution algorithms.
        In the literature sometimes it is also called completeness axiom. Completeness
        axiom states that the sum of the attribution must be equal to the differences of
        NN Models's function at its end and start points. In other words:
        sum(attributions) - (F(end_point) - F(start_point)) is close to zero.
        Returned delta of this method is defined as above stated difference.

        This implementation assumes that both the `start_point` and `end_point` have
        the same shape and dimensionality. It also assumes that the target must have
        the same number of examples as the `start_point` and the `end_point` in case
        it is provided in form of a list or a non-singleton tensor.

        Args:

                attributions (tensor or tuple of tensors): Precomputed attribution
                            scores. The user can compute those using any attribution
                            algorithm. It is assumed the the shape and the
                            dimensionality of attributions must match the shape and
                            the dimensionality of `start_point` and `end_point`.
                            It also assumes that the attribution tensor's
                            dimension 0 corresponds to the number of
                            examples, and if multiple input tensors are provided,
                            the examples must be aligned appropriately.
                start_point (tensor or tuple of tensors, optional): `start_point`
                            is passed as an input to model's forward function. It
                            is the starting point of attributions' approximation.
                            It is assumed that both `start_point` and `end_point`
                            have the same shape and dimensionality.
                end_point (tensor or tuple of tensors):  `end_point`
                            is passed as an input to model's forward function. It
                            is the end point of attributions' approximation.
                            It is assumed that both `start_point` and `end_point`
                            have the same shape and dimensionality.
                target (int, tuple, tensor or list, optional):  Output indices for
                            which gradients are computed (for classification cases,
                            this is usually the target class).
                            If the network returns a scalar value per example,
                            no target index is necessary.
                            For general 2D outputs, targets can be either:

                            - a single integer or a tensor containing a single
                              integer, which is applied to all input examples

                            - a list of integers or a 1D tensor, with length matching
                              the number of examples in inputs (dim 0). Each integer
                              is applied as the target for the corresponding example.

                            For outputs with > 2 dimensions, targets can be either:

                            - A single tuple, which contains #output_dims - 1
                              elements. This target index is applied to all examples.

                            - A list of tuples with length equal to the number of
                              examples in inputs (dim 0), and each tuple containing
                              #output_dims - 1 elements. Each tuple is applied as the
                              target for the corresponding example.

                            Default: None
                additional_forward_args (any, optional): If the forward function
                            requires additional arguments other than the inputs for
                            which attributions should not be computed, this argument
                            can be provided. It must be either a single additional
                            argument of a Tensor or arbitrary (non-tuple) type or a
                            tuple containing multiple additional arguments including
                            tensors or any arbitrary python types. These arguments
                            are provided to forward_func in order following the
                            arguments in inputs.
                            For a tensor, the first dimension of the tensor must
                            correspond to the number of examples.
                            `additional_forward_args` is used both for `start_point`
                            and `end_point` when computing the forward pass.
                            Default: None

        Returns:

                *tensor* of **deltas**:
                - **deltas** (*tensor*):
                    This implementation returns convergence delta per
                    sample. Deriving sub-classes may do any type of aggregation
                    of those values, if necessary.
        """
        end_point, start_point = _format_input_baseline(end_point, start_point)
        additional_forward_args = _format_additional_forward_args(
            additional_forward_args)
        # tensorizing start_point in case it is a scalar or one example baseline
        # If the batch size is large we could potentially also tensorize only one
        # sample and expand the output to the rest of the elements in the batch
        start_point = _tensorize_baseline(end_point, start_point)

        attributions = _format_tensor_into_tuples(attributions)

        # verify that the attributions and end_point match on 1st dimension
        for attribution, end_point_tnsr in zip(attributions, end_point):
            assert end_point_tnsr.shape[0] == attribution.shape[0], (
                "Attributions tensor and the end_point must match on the first"
                " dimension but found attribution: {} and end_point: {}".
                format(attribution.shape[0], end_point_tnsr.shape[0]))

        num_samples = end_point[0].shape[0]
        _validate_input(end_point, start_point)
        _validate_target(num_samples, target)

        with torch.no_grad():
            start_out_sum = _sum_rows(
                _run_forward(self.forward_func, start_point, target,
                             additional_forward_args))

            end_out_sum = _sum_rows(
                _run_forward(self.forward_func, end_point, target,
                             additional_forward_args))
            row_sums = [_sum_rows(attribution) for attribution in attributions]
            attr_sum = torch.stack(
                [cast(Tensor, sum(row_sum)) for row_sum in zip(*row_sums)])
            _delta = attr_sum - (end_out_sum - start_out_sum)
        return _delta
示例#8
0
    def attribute(
        self,
        inputs: TensorOrTupleOfTensorsGeneric,
        baselines: BaselineType = None,
        target: TargetType = None,
        additional_forward_args: Any = None,
        feature_mask: Union[None, TensorOrTupleOfTensorsGeneric] = None,
        n_samples: int = 25,
        perturbations_per_eval: int = 1,
        show_progress: bool = False,
    ) -> TensorOrTupleOfTensorsGeneric:
        r"""
        NOTE: The feature_mask argument differs from other perturbation based
        methods, since feature indices can overlap across tensors. See the
        description of the feature_mask argument below for more details.

        Args:

                inputs (tensor or tuple of tensors):  Input for which Shapley value
                            sampling attributions are computed. If forward_func takes
                            a single tensor as input, a single input tensor should
                            be provided.
                            If forward_func takes multiple tensors as input, a tuple
                            of the input tensors should be provided. It is assumed
                            that for all given input tensors, dimension 0 corresponds
                            to the number of examples (aka batch size), and if
                            multiple input tensors are provided, the examples must
                            be aligned appropriately.
                baselines (scalar, tensor, tuple of scalars or tensors, optional):
                            Baselines define reference value which replaces each
                            feature when ablated.
                            Baselines can be provided as:

                            - a single tensor, if inputs is a single tensor, with
                              exactly the same dimensions as inputs or the first
                              dimension is one and the remaining dimensions match
                              with inputs.

                            - a single scalar, if inputs is a single tensor, which will
                              be broadcasted for each input value in input tensor.

                            - a tuple of tensors or scalars, the baseline corresponding
                              to each tensor in the inputs' tuple can be:

                              - either a tensor with matching dimensions to
                                corresponding tensor in the inputs' tuple
                                or the first dimension is one and the remaining
                                dimensions match with the corresponding
                                input tensor.

                              - or a scalar, corresponding to a tensor in the
                                inputs' tuple. This scalar value is broadcasted
                                for corresponding input tensor.
                            In the cases when `baselines` is not provided, we internally
                            use zero scalar corresponding to each input tensor.
                            Default: None
                target (int, tuple, tensor or list, optional):  Output indices for
                            which difference is computed (for classification cases,
                            this is usually the target class).
                            If the network returns a scalar value per example,
                            no target index is necessary.
                            For general 2D outputs, targets can be either:

                            - a single integer or a tensor containing a single
                              integer, which is applied to all input examples

                            - a list of integers or a 1D tensor, with length matching
                              the number of examples in inputs (dim 0). Each integer
                              is applied as the target for the corresponding example.

                            For outputs with > 2 dimensions, targets can be either:

                            - A single tuple, which contains #output_dims - 1
                              elements. This target index is applied to all examples.

                            - A list of tuples with length equal to the number of
                              examples in inputs (dim 0), and each tuple containing
                              #output_dims - 1 elements. Each tuple is applied as the
                              target for the corresponding example.

                            Default: None
                additional_forward_args (any, optional): If the forward function
                            requires additional arguments other than the inputs for
                            which attributions should not be computed, this argument
                            can be provided. It must be either a single additional
                            argument of a Tensor or arbitrary (non-tuple) type or a
                            tuple containing multiple additional arguments including
                            tensors or any arbitrary python types. These arguments
                            are provided to forward_func in order following the
                            arguments in inputs.
                            For a tensor, the first dimension of the tensor must
                            correspond to the number of examples. For all other types,
                            the given argument is used for all forward evaluations.
                            Note that attributions are not computed with respect
                            to these arguments.
                            Default: None
                feature_mask (tensor or tuple of tensors, optional):
                            feature_mask defines a mask for the input, grouping
                            features which should be added together. feature_mask
                            should contain the same number of tensors as inputs.
                            Each tensor should
                            be the same size as the corresponding input or
                            broadcastable to match the input tensor. Values across
                            all tensors should be integers in the range 0 to
                            num_features - 1, and indices corresponding to the same
                            feature should have the same value.
                            Note that features are grouped across tensors
                            (unlike feature ablation and occlusion), so
                            if the same index is used in different tensors, those
                            features are still grouped and added simultaneously.
                            If the forward function returns a single scalar per batch,
                            we enforce that the first dimension of each mask must be 1,
                            since attributions are returned batch-wise rather than per
                            example, so the attributions must correspond to the
                            same features (indices) in each input example.
                            If None, then a feature mask is constructed which assigns
                            each scalar within a tensor as a separate feature
                            Default: None
                n_samples (int, optional):  The number of feature permutations
                            tested.
                            Default: `25` if `n_samples` is not provided.
                perturbations_per_eval (int, optional): Allows multiple ablations
                            to be processed simultaneously in one call to forward_fn.
                            Each forward pass will contain a maximum of
                            perturbations_per_eval * #examples samples.
                            For DataParallel models, each batch is split among the
                            available devices, so evaluations on each available
                            device contain at most
                            (perturbations_per_eval * #examples) / num_devices
                            samples.
                            If the forward function returns a single scalar per batch,
                            perturbations_per_eval must be set to 1.
                            Default: 1
                show_progress (bool, optional): Displays the progress of computation.
                            It will try to use tqdm if available for advanced features
                            (e.g. time estimation). Otherwise, it will fallback to
                            a simple output of progress.
                            Default: False

        Returns:
                *tensor* or tuple of *tensors* of **attributions**:
                - **attributions** (*tensor* or tuple of *tensors*):
                            The attributions with respect to each input feature.
                            If the forward function returns
                            a scalar value per example, attributions will be
                            the same size as the provided inputs, with each value
                            providing the attribution of the corresponding input index.
                            If the forward function returns a scalar per batch, then
                            attribution tensor(s) will have first dimension 1 and
                            the remaining dimensions will match the input.
                            If a single tensor is provided as inputs, a single tensor is
                            returned. If a tuple is provided for inputs, a tuple of
                            corresponding sized tensors is returned.


        Examples::

            >>> # SimpleClassifier takes a single input tensor of size Nx4x4,
            >>> # and returns an Nx3 tensor of class probabilities.
            >>> net = SimpleClassifier()
            >>> # Generating random input with size 2 x 4 x 4
            >>> input = torch.randn(2, 4, 4)
            >>> # Defining ShapleyValueSampling interpreter
            >>> svs = ShapleyValueSampling(net)
            >>> # Computes attribution, taking random orderings
            >>> # of the 16 features and computing the output change when adding
            >>> # each feature. We average over 200 trials (random permutations).
            >>> attr = svs.attribute(input, target=1, n_samples=200)

            >>> # Alternatively, we may want to add features in groups, e.g.
            >>> # grouping each 2x2 square of the inputs and adding them together.
            >>> # This can be done by creating a feature mask as follows, which
            >>> # defines the feature groups, e.g.:
            >>> # +---+---+---+---+
            >>> # | 0 | 0 | 1 | 1 |
            >>> # +---+---+---+---+
            >>> # | 0 | 0 | 1 | 1 |
            >>> # +---+---+---+---+
            >>> # | 2 | 2 | 3 | 3 |
            >>> # +---+---+---+---+
            >>> # | 2 | 2 | 3 | 3 |
            >>> # +---+---+---+---+
            >>> # With this mask, all inputs with the same value are added
            >>> # together, and the attribution for each input in the same
            >>> # group (0, 1, 2, and 3) per example are the same.
            >>> # The attributions can be calculated as follows:
            >>> # feature mask has dimensions 1 x 4 x 4
            >>> feature_mask = torch.tensor([[[0,0,1,1],[0,0,1,1],
            >>>                             [2,2,3,3],[2,2,3,3]]])
            >>> attr = svs.attribute(input, target=1, feature_mask=feature_mask)
        """
        # Keeps track whether original input is a tuple or not before
        # converting it into a tuple.
        is_inputs_tuple = _is_tuple(inputs)
        inputs, baselines = _format_input_baseline(inputs, baselines)
        additional_forward_args = _format_additional_forward_args(
            additional_forward_args
        )
        feature_mask = (
            _format_tensor_into_tuples(feature_mask)
            if feature_mask is not None
            else None
        )
        assert (
            isinstance(perturbations_per_eval, int) and perturbations_per_eval >= 1
        ), "Ablations per evaluation must be at least 1."

        with torch.no_grad():
            baselines = _tensorize_baseline(inputs, baselines)
            num_examples = inputs[0].shape[0]

            if feature_mask is None:
                feature_mask, total_features = _construct_default_feature_mask(inputs)
            else:
                total_features = int(
                    max(torch.max(single_mask).item() for single_mask in feature_mask)
                    + 1
                )

            if show_progress:
                attr_progress = progress(
                    desc=f"{self.get_name()} attribution",
                    total=self._get_n_evaluations(
                        total_features, n_samples, perturbations_per_eval
                    )
                    + 1,  # add 1 for the initial eval
                )
                attr_progress.update(0)

            initial_eval = _run_forward(
                self.forward_func, baselines, target, additional_forward_args
            )

            if show_progress:
                attr_progress.update()

            agg_output_mode = _find_output_mode_and_verify(
                initial_eval, num_examples, perturbations_per_eval, feature_mask
            )

            # Initialize attribution totals and counts
            total_attrib = [
                torch.zeros_like(
                    input[0:1] if agg_output_mode else input, dtype=torch.float
                )
                for input in inputs
            ]

            iter_count = 0
            # Iterate for number of samples, generate a permutation of the features
            # and evalute the incremental increase for each feature.
            for feature_permutation in self.permutation_generator(
                total_features, n_samples
            ):
                iter_count += 1
                prev_results = initial_eval
                for (
                    current_inputs,
                    current_add_args,
                    current_target,
                    current_masks,
                ) in self._perturbation_generator(
                    inputs,
                    additional_forward_args,
                    target,
                    baselines,
                    feature_mask,
                    feature_permutation,
                    perturbations_per_eval,
                ):
                    if sum(torch.sum(mask).item() for mask in current_masks) == 0:
                        warnings.warn(
                            "Feature mask is missing some integers between 0 and "
                            "num_features, for optimal performance, make sure each"
                            " consecutive integer corresponds to a feature."
                        )
                    # modified_eval dimensions: 1D tensor with length
                    # equal to #num_examples * #features in batch
                    modified_eval = _run_forward(
                        self.forward_func,
                        current_inputs,
                        current_target,
                        current_add_args,
                    )
                    if show_progress:
                        attr_progress.update()

                    if agg_output_mode:
                        eval_diff = modified_eval - prev_results
                        prev_results = modified_eval
                    else:
                        all_eval = torch.cat((prev_results, modified_eval), dim=0)
                        eval_diff = all_eval[num_examples:] - all_eval[:-num_examples]
                        prev_results = all_eval[-num_examples:]
                    for j in range(len(total_attrib)):
                        current_eval_diff = eval_diff
                        if not agg_output_mode:
                            # current_eval_diff dimensions:
                            # (#features in batch, #num_examples, 1,.. 1)
                            # (contains 1 more dimension than inputs). This adds extra
                            # dimensions of 1 to make the tensor broadcastable with the
                            # inputs tensor.
                            current_eval_diff = current_eval_diff.reshape(
                                (-1, num_examples) + (len(inputs[j].shape) - 1) * (1,)
                            )
                        total_attrib[j] += (
                            current_eval_diff * current_masks[j].float()
                        ).sum(dim=0)

            if show_progress:
                attr_progress.close()

            # Divide total attributions by number of random permutations and return
            # formatted attributions.
            attrib = tuple(
                tensor_attrib_total / iter_count for tensor_attrib_total in total_attrib
            )
            formatted_attr = _format_output(is_inputs_tuple, attrib)
        return formatted_attr
    def _compute_attribution_and_evaluate(
        self,
        model,
        inputs,
        baselines=None,
        target=None,
        additional_forward_args=None,
        type="vanilla",
    ):
        r"""
            attrib_type: 'vanilla', 'smoothgrad', 'smoothgrad_sq', 'vargrad'
        """
        ig = IntegratedGradients(model)
        if not isinstance(inputs, tuple):
            inputs = (inputs, )

        if baselines is not None and not isinstance(baselines, tuple):
            baselines = (baselines, )

        if baselines is None:
            baselines = _tensorize_baseline(inputs, _zeros(inputs))

        for method in [
                "riemann_right",
                "riemann_left",
                "riemann_middle",
                "riemann_trapezoid",
                "gausslegendre",
        ]:
            if type == "vanilla":
                attributions, delta = ig.attribute(
                    inputs,
                    baselines,
                    additional_forward_args=additional_forward_args,
                    method=method,
                    n_steps=100,
                    target=target,
                    return_convergence_delta=True,
                )
                model.zero_grad()
                attributions_without_delta, delta = ig.attribute(
                    inputs,
                    baselines,
                    additional_forward_args=additional_forward_args,
                    method=method,
                    n_steps=100,
                    target=target,
                    return_convergence_delta=True,
                )
                model.zero_grad()
                self.assertEqual([inputs[0].shape[0]], list(delta.shape))
                delta_external = ig.compute_convergence_delta(
                    attributions,
                    baselines,
                    inputs,
                    target=target,
                    additional_forward_args=additional_forward_args,
                )
                assertArraysAlmostEqual(delta, delta_external, 0.0)
            else:
                nt = NoiseTunnel(ig)
                n_samples = 5
                attributions, delta = nt.attribute(
                    inputs,
                    nt_type=type,
                    n_samples=n_samples,
                    stdevs=0.00000002,
                    baselines=baselines,
                    target=target,
                    additional_forward_args=additional_forward_args,
                    method=method,
                    n_steps=100,
                    return_convergence_delta=True,
                )
                attributions_without_delta = nt.attribute(
                    inputs,
                    nt_type=type,
                    n_samples=n_samples,
                    stdevs=0.00000002,
                    baselines=baselines,
                    target=target,
                    additional_forward_args=additional_forward_args,
                    method=method,
                    n_steps=100,
                )
                self.assertEqual([inputs[0].shape[0] * n_samples],
                                 list(delta.shape))

            for input, attribution in zip(inputs, attributions):
                self.assertEqual(attribution.shape, input.shape)
            # TODO (T57097503): Separate tests for different
            # integration methods and decrease threshold.
            self.assertTrue(all(abs(delta.numpy().flatten()) < 0.4))

            # compare attributions retrieved with and without
            # `return_convergence_delta` flag
            for attribution, attribution_without_delta in zip(
                    attributions, attributions_without_delta):
                assertTensorAlmostEqual(self,
                                        attribution,
                                        attribution_without_delta,
                                        delta=0.05)

        return attributions