Beispiel #1
0
class LFIRE(ParameterInference):
    """Likelihood-Free Inference by Ratio Estimation (LFIRE).

    For a describtion of the LFIRE, see e.g. Thomas et al. 2018.

    References
    ----------
    O. Thomas, R. Dutta, J. Corander, S. Kaski, and M. U. Gutmann,
    Likelihood-Free Inference by Ratio Estimation, arXiv preprint arXiv:1611.10242, 2018.

    """
    def __init__(self,
                 model,
                 params_grid,
                 marginal=None,
                 logreg_config=None,
                 output_names=None,
                 parallel_cv=True,
                 seed_marginal=None,
                 **kwargs):
        """Initializes LFIRE.

        Parameters
        ----------
        model: ElfiModel
            The elfi graph used by the algorithm.
        params_grid: np.ndarray
            A grid over which posterior values are evaluated.
        marginal: np.ndarray, optional
            Marginal data.
        logreg_config: dict, optional
            A config dictionary for logistic regression.
        output_names: list, optional
            Names of the nodes whose outputs are included in the batches.
        parallel_cv: bool, optional
            Either cross-validation or elfi can be run in parallel.
        batch_size: int, optional
            A size of training data.
        seed_marginal: int, optional
            Seed for marginal data generation.
        kwargs:
            See InferenceMethod.

        """
        super(LFIRE, self).__init__(model, output_names, **kwargs)

        self.summary_names = self._get_summary_names()
        if len(self.summary_names) == 0:
            raise NotImplementedError(
                'Your model must have at least one Summary node.')

        self.params_grid = self._resolve_params_grid(params_grid)
        self.marginal = self._resolve_marginal(marginal, seed_marginal)
        self.observed = self._get_observed_summary_values()
        self.joint_prior = ModelPrior(self.model)
        self.logreg_config = self._resolve_logreg_config(
            logreg_config, parallel_cv)

        self._resolve_elfi_client(parallel_cv)

        n_batches = self.params_grid.shape[0]
        self.state['posterior'] = np.empty(n_batches)
        self.state['lambda'] = np.empty(n_batches)
        self.state['coef'] = np.empty((n_batches, self.observed.shape[1]))
        self.state['intercept'] = np.empty(n_batches)
        self.state['infinity'] = {
            parameter_name: []
            for parameter_name in self.parameter_names
        }
        for parameter_name in self.parameter_names:
            self.state[parameter_name] = np.empty(n_batches)

    def set_objective(self):
        """Sets objective for inference."""
        self.objective['n_batches'] = self.params_grid.shape[0]
        self.objective['n_sim'] = self.params_grid.shape[0] * self.batch_size

    def extract_result(self):
        """Extracts the result from the current state.

        Returns
        -------
        LFIREPosterior

        """
        return LFIREPosterior(method_name='LFIRE',
                              outputs=self.state,
                              parameter_names=self.parameter_names)

    def update(self, batch, batch_index):
        """Updates the inference state with a new batch and performs LFIRE.

        Parameters
        ----------
        batch: dict
        batch_index: int

        """
        # TODO: beautify this
        super(LFIRE, self).update(batch, batch_index)

        # Parse likelihood values
        likelihood = [
            batch[summary_name] for summary_name in self.summary_names
        ]
        likelihood = np.column_stack(likelihood)

        # Create training data
        X = np.vstack((likelihood, self.marginal))
        y = np.concatenate((np.ones(likelihood.shape[0]),
                            -1 * np.ones(self.marginal.shape[0])))

        # Logistic regression
        m = LogitNet(**self.logreg_config)
        m.fit(X, y)

        # Likelihood value
        log_likelihood_value = m.intercept_ + np.sum(
            np.multiply(m.coef_, self.observed))
        likelihood_value = np.exp(log_likelihood_value)

        # Joint prior value
        parameter_values = [
            batch[parameter_name] for parameter_name in self.parameter_names
        ]
        joint_prior_value = self.joint_prior.pdf(parameter_values)

        # Posterior value
        posterior_value = joint_prior_value * likelihood_value

        # Check if posterior value is non-finite
        if np.isinf(posterior_value):
            params = self.params_grid[batch_index]
            warnings.warn(
                f'Posterior value is not finite for parameters \
                          {self.parameter_names} = {params} and thus will be replaced with zero!',
                RuntimeWarning)
            posterior_value = 0
            for i, parameter_name in enumerate(self.parameter_names):
                self.state['infinity'][parameter_name] += [params[i]]

        # Update state dictionary
        self.state['posterior'][batch_index] = posterior_value
        self.state['lambda'][batch_index] = m.lambda_best_
        self.state['coef'][batch_index, :] = m.coef_
        self.state['intercept'][batch_index] = m.intercept_
        for parameter_name in self.parameter_names:
            self.state[parameter_name][batch_index] = batch[parameter_name]

    def prepare_new_batch(self, batch_index):
        """Prepares a new batch for elfi.

        Parameters
        ----------
        batch_index: int

        Returns
        -------
        dict

        """
        params = self.params_grid[batch_index]
        names = self.parameter_names
        batch = {p: params[i] for i, p in enumerate(names)}
        return batch

    def _resolve_params_grid(self, params_grid):
        """Resolves parameters grid.

        Parameters
        ----------
        params_grid: np.ndarray

        Returns
        -------
        np.ndarray

        """
        if isinstance(params_grid, np.ndarray) and len(params_grid.shape) == 2:
            return params_grid
        else:
            raise TypeError('params_grid must be 2d numpy array.')

    def _resolve_marginal(self, marginal, seed_marginal=None):
        """Resolves marginal data.

        Parameters
        ----------
        marginal: np.ndarray
        seed_marginal: int, optional

        Returns
        -------
        np.ndarray

        """
        if marginal is None:
            marginal = self._generate_marginal(seed_marginal)
            x, y = marginal.shape
            logger.info(f'New marginal data ({x} x {y}) are generated.')
            return marginal
        elif isinstance(marginal, np.ndarray) and len(marginal.shape) == 2:
            return marginal
        else:
            raise TypeError('marginal must be 2d numpy array.')

    def _generate_marginal(self, seed_marginal=None):
        """Generates marginal data.

        Parameters
        ----------
        seed_marginal: int, optional

        Returns
        -------
        np.ndarray

        """
        if seed_marginal is None:
            batch = self.model.generate(self.batch_size)
        else:
            batch = self.model.generate(self.batch_size, seed=seed_marginal)
        marginal = [batch[summary_name] for summary_name in self.summary_names]
        marginal = np.column_stack(marginal)
        return marginal

    def _get_summary_names(self):
        """Gets the names of summary statistics.

        Returns
        -------
        list

        """
        summary_names = []
        for node in self.model.nodes:
            if isinstance(self.model[node],
                          Summary) and not node.startswith('_'):
                summary_names.append(node)
        return summary_names

    def _get_observed_summary_values(self):
        """Gets observed values for summary statistics.

        Returns
        -------
        np.ndarray

        """
        observed_ss = [
            self.model[summary_name].observed
            for summary_name in self.summary_names
        ]
        observed_ss = np.column_stack(observed_ss)
        return observed_ss

    def _resolve_logreg_config(self, logreg_config, parallel_cv):
        """Resolves logistic regression config.

        Parameters
        ----------
        logreg_config: dict
            Config dictionary for logistic regression.
        parallel_cv: bool

        Returns
        -------
        dict

        """
        if isinstance(logreg_config, dict):
            # TODO: check valid kwargs
            return logreg_config
        else:
            return self._get_default_logreg_config(parallel_cv)

    def _get_default_logreg_config(self, parallel_cv):
        """Creates logistic regression config.

        Parameters
        ----------
        parallel_cv: bool

        Returns
        -------
        dict

        """
        logreg_config = {
            'alpha': 1,
            'n_splits': 10,
            'n_jobs': cpu_count() if parallel_cv else 1,
            'cut_point': 0
        }
        return logreg_config

    def _resolve_elfi_client(self, parallel_cv):
        """Resolves elfi client. Either elfi or cross-validation can be run in parallel.

        Parameters
        ----------
        parallel_cv: bool

        """
        if parallel_cv:
            set_client('native')
Beispiel #2
0
 def test_pdf(self, ma2):
     prior = ModelPrior(ma2)
     rv = prior.rvs(size=10)
     assert np.allclose(prior.pdf(rv), np.exp(prior.logpdf(rv)))
Beispiel #3
0
class LFIRE(ParameterInference):
    """Likelihood-Free Inference by Ratio Estimation (LFIRE).

    For a describtion of the LFIRE, see e.g. Thomas et al. 2018.

    References
    ----------
    O. Thomas, R. Dutta, J. Corander, S. Kaski, and M. U. Gutmann,
    Likelihood-Free Inference by Ratio Estimation, arXiv preprint arXiv:1611.10242, 2018.

    """
    def __init__(self,
                 model,
                 params_grid,
                 marginal=None,
                 classifier=None,
                 output_names=None,
                 seed_marginal=None,
                 precomputed_models=None,
                 **kwargs):
        """Initializes LFIRE.

        Parameters
        ----------
        model: ElfiModel
            The elfi graph used by the algorithm.
        params_grid: np.ndarray
            A grid over which posterior values are evaluated.
        marginal: np.ndarray, optional
            Marginal data.
        classifier: str, optional
            Classifier to be used. Default LogisticRegression.
        output_names: list, optional
            Names of the nodes whose outputs are included in the batches.
        batch_size: int, optional
            A size of training data.
        seed_marginal: int, optional
            Seed for marginal data generation.
        precomputed_models: file or str, optional
            Precomputed classifier parameters file.
        kwargs:
            See InferenceMethod.

        """
        super(LFIRE, self).__init__(model, output_names, **kwargs)

        # 1. parse model:
        self.summary_names = self._get_summary_names()
        if len(self.summary_names) == 0:
            raise NotImplementedError(
                'Your model must have at least one Summary node.')
        self.joint_prior = ModelPrior(self.model)

        # 2. LFIRE setup:
        self.params_grid = self._resolve_params_grid(params_grid)
        self.classifier = self._resolve_classifier(classifier)
        self._resolve_elfi_client(self.classifier.parallel_cv)
        n_batches = self.params_grid.shape[0]

        # 3. initialise results containers:
        self.state['posterior'] = np.empty(n_batches)
        self.state['infinity'] = {
            parameter_name: []
            for parameter_name in self.parameter_names
        }

        # 4. initialise or load likelihood ratio models:
        if precomputed_models is None:
            self.marginal = self._resolve_marginal(marginal, seed_marginal)
            for parameter_name in self.parameter_names:
                self.state[parameter_name] = np.empty(n_batches)
        else:
            self.load_models(precomputed_models)

        # 5. calculate prior probabilities:
        self.state['prior'] = self.joint_prior.pdf(params_grid)

    def set_objective(self):
        """Sets objective for inference."""
        self.objective['n_batches'] = self.params_grid.shape[0]
        self.objective['n_sim'] = self.params_grid.shape[0] * self.batch_size

    def extract_result(self):
        """Extracts the result from the current state.

        Returns
        -------
        LFIREPosterior

        """
        return LFIREPosterior(method_name='LFIRE',
                              outputs=copy.deepcopy(self.state),
                              parameter_names=self.parameter_names)

    def update(self, batch, batch_index):
        """Updates the inference state with a new batch and performs LFIRE.

        Parameters
        ----------
        batch: dict
        batch_index: int

        """
        # TODO: beautify this
        super(LFIRE, self).update(batch, batch_index)

        # Parse likelihood values
        likelihood = [
            batch[summary_name] for summary_name in self.summary_names
        ]
        likelihood = np.column_stack(likelihood)

        # Create training data
        X = np.vstack((likelihood, self.marginal))
        y = np.concatenate((np.ones(likelihood.shape[0]),
                            -1 * np.ones(self.marginal.shape[0])))

        # Classification
        self.classifier.fit(X, y, index=batch_index)

        # Likelihood value
        likelihood_ratio = self.classifier.predict_likelihood_ratio(
            self.observed, index=batch_index)

        # Posterior value
        posterior_value = self.state['prior'][batch_index] * likelihood_ratio

        # Check if posterior value is non-finite
        if np.isinf(posterior_value):
            params = self.params_grid[batch_index]
            warnings.warn(
                f'Posterior value is not finite for parameters \
                          {self.parameter_names} = {params} and thus will be replaced with zero!',
                RuntimeWarning)
            posterior_value = 0
            for i, parameter_name in enumerate(self.parameter_names):
                self.state['infinity'][parameter_name] += [params[i]]

        # Update state dictionary
        self.state['posterior'][batch_index] = posterior_value
        for parameter_name in self.parameter_names:
            self.state[parameter_name][batch_index] = batch[parameter_name]

    def prepare_new_batch(self, batch_index):
        """Prepares a new batch for elfi.

        Parameters
        ----------
        batch_index: int

        Returns
        -------
        dict

        """
        params = self.params_grid[batch_index]
        names = self.parameter_names
        batch = {p: params[i] for i, p in enumerate(names)}
        return batch

    def infer(self, *args, observed=None, **kwargs):
        """Set the objective and start the iterate loop until the inference is finished.
        See the other arguments from the `set_objective` method.

        Parameters
        ----------
        observed: dict, optional
            Observed data with node names as keys.
        bar : bool, optional
            Flag to remove (False) or keep (True) the progress bar from/in output.

        Returns
        -------
        LFIREPosterior

        """
        # 1. extract observed sum stats
        if observed is not None:
            self.model.observed = observed
        self.observed = self._get_observed_summary_values()

        # 2. evaluate posterior
        if self.state['n_batches'] < self.params_grid.shape[0]:
            post = super(LFIRE, self).infer(*args, **kwargs)
        else:
            post = self._evaluate_posterior()
        return post

    def save_models(self, file):
        """Save parameter grid and classifier parameters.

        Parameters
        ----------
        file: file or str
            File or filename to which the data is saved.

        """
        data = defaultdict(list)

        # 1. parameter grid
        for parameter_name in self.parameter_names:
            data[parameter_name] = self.state[parameter_name]

        # 2. classifier parameters
        # store classifier parameters in the same order as parameter names:
        for batch_index in range(self.state['n_batches']):
            params = self.classifier.get(batch_index)
            for param in params.keys():
                data[param].append(params[param])

        np.savez(file, **data)

    def load_models(self, file):
        """Load parameter grid and classifier parameters.

        Parameters
        ----------
        file: file or str
            File or filename that contains the data.

        """
        data = np.load(file)

        # 1. load parameter grid:
        for index, parameter_name in enumerate(self.parameter_names):
            if parameter_name not in data:
                raise KeyError('Model parameter {} '.format(parameter_name) +
                               'not found in saved data')
            if np.all(self.params_grid[:, index] != data[parameter_name]):
                raise ValueError(
                    'Parameter values in saved data do not match ' +
                    'the input parameter grid.')
            self.state[parameter_name] = data[parameter_name]

        # 2. load classifier parameters:
        n_batches = self.params_grid.shape[0]
        for batch_index in range(n_batches):
            params = {param: data[param][batch_index] for param in data.files}
            self.classifier.set(params, batch_index)

        # 3. update inference state:
        self.state['n_batches'] = n_batches

    def _evaluate_posterior(self):
        """Evaluates posterior probabilities.
~
        Returns
        -------
        LFIREPosterior

        """
        for ii in range(self.state['n_batches']):
            # evaluate likelihood ratio with precomputed classifier parameters
            ratio = self.classifier.predict_likelihood_ratio(self.observed,
                                                             index=ii)
            # calculate posterior value
            self.state['posterior'][ii] = self.state['prior'][ii] * ratio

        return self.extract_result()

    def _resolve_params_grid(self, params_grid):
        """Resolves parameters grid.

        Parameters
        ----------
        params_grid: np.ndarray

        Returns
        -------
        np.ndarray

        """
        if isinstance(params_grid, np.ndarray) and len(params_grid.shape) == 2:
            return params_grid
        else:
            raise TypeError('params_grid must be 2d numpy array.')

    def _resolve_marginal(self, marginal, seed_marginal=None):
        """Resolves marginal data.

        Parameters
        ----------
        marginal: np.ndarray
        seed_marginal: int, optional

        Returns
        -------
        np.ndarray

        """
        if marginal is None:
            marginal = self._generate_marginal(seed_marginal)
            x, y = marginal.shape
            logger.info(f'New marginal data ({x} x {y}) are generated.')
            return marginal
        elif isinstance(marginal, np.ndarray) and len(marginal.shape) == 2:
            return marginal
        else:
            raise TypeError('marginal must be 2d numpy array.')

    def _generate_marginal(self, seed_marginal=None):
        """Generates marginal data.

        Parameters
        ----------
        seed_marginal: int, optional

        Returns
        -------
        np.ndarray

        """
        if seed_marginal is None:
            batch = self.model.generate(self.batch_size)
        else:
            batch = self.model.generate(self.batch_size, seed=seed_marginal)
        marginal = [batch[summary_name] for summary_name in self.summary_names]
        marginal = np.column_stack(marginal)
        return marginal

    def _get_summary_names(self):
        """Gets the names of summary statistics.

        Returns
        -------
        list

        """
        summary_names = []
        for node in self.model.nodes:
            if isinstance(self.model[node],
                          Summary) and not node.startswith('_'):
                summary_names.append(node)
        return summary_names

    def _get_observed_summary_values(self):
        """Gets observed values for summary statistics.

        Returns
        -------
        np.ndarray

        """
        observed_ss = [
            self.model[summary_name].observed
            for summary_name in self.summary_names
        ]
        observed_ss = np.column_stack(observed_ss)
        return observed_ss

    def _resolve_classifier(self, classifier):
        """Resolves classifier."""
        if classifier is None:
            return LogisticRegression()
        elif isinstance(classifier, Classifier):
            return classifier
        else:
            raise ValueError('classifier must be an instance of Classifier.')

    def _resolve_elfi_client(self, parallel_cv):
        """Resolves elfi client. Either elfi or cross-validation can be run in parallel.

        Parameters
        ----------
        parallel_cv: bool

        """
        if parallel_cv:
            set_client('native')