Пример #1
0
    def fit(self, data_pack: DataPack, verbose=1):
        """
        Fit pre-processing context for transformation.

        :param data_pack: data_pack to be preprocessed.
        :param verbose: Verbosity.
        :return: class:`BasicPreprocessor` instance.
        """
        units = self._default_processor_units()
        data_pack = data_pack.apply_on_text(chain_transform(units),
                                            verbose=verbose)

        fitted_filter_unit = build_unit_from_data_pack(self._filter_unit,
                                                       data_pack,
                                                       flatten=False,
                                                       mode='right',
                                                       verbose=verbose)
        data_pack = data_pack.apply_on_text(fitted_filter_unit.transform,
                                            mode='right',
                                            verbose=verbose)
        self._context['filter_unit'] = fitted_filter_unit

        vocab_unit = build_vocab_unit(data_pack, verbose=verbose)
        self._context['vocab_unit'] = vocab_unit
        self._context['vocab_size'] = len(vocab_unit.state['term_index']) + 1

        self._context['input_shapes'] = [(self._fixed_length_left, ),
                                         (self._fixed_length_right, )]

        return self
Пример #2
0
    def fit(self, data_pack: DataPack, verbose: int = 1):
        """
        Fit pre-processing context for transformation.

        :param data_pack: data_pack to be preprocessed.
        :param verbose: Verbosity.
        :return: class:`NaivePreprocessor` instance.
        """
        units = self._default_processor_units()
        data_pack = data_pack.apply_on_text(chain_transform(units),
                                            verbose=verbose)
        vocab_unit = build_vocab_unit(data_pack, verbose=verbose)
        self._context['vocab_unit'] = vocab_unit
        return self
Пример #3
0
    def fit(self, data_pack: DataPack, verbose=1):
        """
        Fit pre-processing context for transformation.

        :param verbose: Verbosity.
        :param data_pack: data_pack to be preprocessed.
        :return: class:`DSSMPreprocessor` instance.
        """
        units = self._default_processor_units()
        data_pack = data_pack.apply_on_text(chain_transform(units),
                                            verbose=verbose)
        vocab_unit = build_vocab_unit(data_pack, verbose=verbose)

        self._context['vocab_unit'] = vocab_unit
        triletter_dim = len(vocab_unit.state['term_index']) + 1
        self._context['input_shapes'] = [(triletter_dim, ), (triletter_dim, )]
        return self
Пример #4
0
    def fit(self, data_pack: DataPack, verbose=1):
        """
        Fit pre-processing context for transformation.

        :param verbose: Verbosity.
        :param data_pack: Data_pack to be preprocessed.
        :return: class:`CDSSMPreprocessor` instance.
        """
        units = self._default_processor_units()
        units.append(processor_units.NgramLetterUnit())
        data_pack = data_pack.apply_on_text(chain_transform(units),
                                            verbose=verbose)
        vocab_unit = build_vocab_unit(data_pack, verbose=verbose)

        self._context['vocab_unit'] = vocab_unit
        vocab_size = len(vocab_unit.state['term_index']) + 1
        self._context['input_shapes'] = [(self._fixed_length_left, vocab_size),
                                         (self._fixed_length_right, vocab_size)
                                         ]
        return self