Esempio n. 1
0
    def from_params(  # type: ignore
            cls, vocab: Vocabulary,
            params: Params) -> "BiattentiveClassificationNetwork":

        embedder_params = params.pop("text_field_embedder")
        text_field_embedder = TextFieldEmbedder.from_params(
            vocab=vocab, params=embedder_params)
        embedding_dropout = params.pop("embedding_dropout")
        pre_encode_feedforward = FeedForward.from_params(
            params.pop("pre_encode_feedforward"))
        encoder = Seq2SeqEncoder.from_params(params.pop("encoder"))
        integrator = Seq2SeqEncoder.from_params(params.pop("integrator"))
        integrator_dropout = params.pop("integrator_dropout")

        output_layer_params = params.pop("output_layer")
        if "activations" in output_layer_params:
            output_layer = FeedForward.from_params(output_layer_params)
        else:
            output_layer = Maxout.from_params(output_layer_params)

        elmo = params.pop("elmo", None)
        if elmo is not None:
            elmo = Elmo.from_params(elmo)
        use_input_elmo = params.pop_bool("use_input_elmo", False)
        use_integrator_output_elmo = params.pop_bool(
            "use_integrator_output_elmo", False)

        initializer = InitializerApplicator.from_params(
            params.pop("initializer", []))
        regularizer = RegularizerApplicator.from_params(
            params.pop("regularizer", []))
        params.assert_empty(cls.__name__)

        return cls(
            vocab=vocab,
            text_field_embedder=text_field_embedder,
            embedding_dropout=embedding_dropout,
            pre_encode_feedforward=pre_encode_feedforward,
            encoder=encoder,
            integrator=integrator,
            integrator_dropout=integrator_dropout,
            output_layer=output_layer,
            elmo=elmo,
            use_input_elmo=use_input_elmo,
            use_integrator_output_elmo=use_integrator_output_elmo,
            initializer=initializer,
            regularizer=regularizer,
        )
    def from_params(cls, vocab: Vocabulary, params: Params) -> 'BiattentiveClassificationNetwork':  # type: ignore
        # pylint: disable=arguments-differ
        embedder_params = params.pop("text_field_embedder")
        text_field_embedder = TextFieldEmbedder.from_params(vocab=vocab, params=embedder_params)
        embedding_dropout = params.pop("embedding_dropout")
        pre_encode_feedforward = FeedForward.from_params(params.pop("pre_encode_feedforward"))
        encoder = Seq2SeqEncoder.from_params(params.pop("encoder"))
        integrator = Seq2SeqEncoder.from_params(params.pop("integrator"))
        integrator_dropout = params.pop("integrator_dropout")

        output_layer_params = params.pop("output_layer")
        if "activations" in output_layer_params:
            output_layer = FeedForward.from_params(output_layer_params)
        else:
            output_layer = Maxout.from_params(output_layer_params)

        elmo = params.pop("elmo", None)
        if elmo is not None:
            elmo = Elmo.from_params(elmo)
        use_input_elmo = params.pop_bool("use_input_elmo", False)
        use_integrator_output_elmo = params.pop_bool("use_integrator_output_elmo", False)

        initializer = InitializerApplicator.from_params(params.pop('initializer', []))
        regularizer = RegularizerApplicator.from_params(params.pop('regularizer', []))
        params.assert_empty(cls.__name__)

        return cls(vocab=vocab,
                   text_field_embedder=text_field_embedder,
                   embedding_dropout=embedding_dropout,
                   pre_encode_feedforward=pre_encode_feedforward,
                   encoder=encoder,
                   integrator=integrator,
                   integrator_dropout=integrator_dropout,
                   output_layer=output_layer,
                   elmo=elmo,
                   use_input_elmo=use_input_elmo,
                   use_integrator_output_elmo=use_integrator_output_elmo,
                   initializer=initializer,
                   regularizer=regularizer)
Esempio n. 3
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    def from_params(cls, vocab            , params        )                                      :  # type: ignore
        # pylint: disable=arguments-differ
        embedder_params = params.pop(u"text_field_embedder")
        text_field_embedder = TextFieldEmbedder.from_params(vocab=vocab, params=embedder_params)
        embedding_dropout = params.pop(u"embedding_dropout")
        pre_encode_feedforward = FeedForward.from_params(params.pop(u"pre_encode_feedforward"))
        encoder = Seq2SeqEncoder.from_params(params.pop(u"encoder"))
        integrator = Seq2SeqEncoder.from_params(params.pop(u"integrator"))
        integrator_dropout = params.pop(u"integrator_dropout")

        output_layer_params = params.pop(u"output_layer")
        if u"activations" in output_layer_params:
            output_layer = FeedForward.from_params(output_layer_params)
        else:
            output_layer = Maxout.from_params(output_layer_params)

        elmo = params.pop(u"elmo", None)
        if elmo is not None:
            elmo = Elmo.from_params(elmo)
        use_input_elmo = params.pop_bool(u"use_input_elmo", False)
        use_integrator_output_elmo = params.pop_bool(u"use_integrator_output_elmo", False)

        initializer = InitializerApplicator.from_params(params.pop(u'initializer', []))
        regularizer = RegularizerApplicator.from_params(params.pop(u'regularizer', []))
        params.assert_empty(cls.__name__)

        return cls(vocab=vocab,
                   text_field_embedder=text_field_embedder,
                   embedding_dropout=embedding_dropout,
                   pre_encode_feedforward=pre_encode_feedforward,
                   encoder=encoder,
                   integrator=integrator,
                   integrator_dropout=integrator_dropout,
                   output_layer=output_layer,
                   elmo=elmo,
                   use_input_elmo=use_input_elmo,
                   use_integrator_output_elmo=use_integrator_output_elmo,
                   initializer=initializer,
                   regularizer=regularizer)
 def from_params(cls, params: Params):
     self._elmo = Elmo.from_params(params)
     return self