Example #1
0
 def __init__(
         self,
         featurewise_center: BooleanValue(),
         samplewise_center: BooleanValue(),
         featurewise_std_normalization: BooleanValue(),
         samplewise_std_normalization: BooleanValue(),
         rotation_range: DiscreteValue(0, 15),
         width_shift_range: ContinuousValue(0, 0.25),
         height_shift_range: ContinuousValue(0, 0.25),
         shear_range: ContinuousValue(0, 15),
         zoom_range: ContinuousValue(0, 0.25),
         horizontal_flip: BooleanValue(),
         vertical_flip: BooleanValue(),
 ):
     super().__init__(
         featurewise_center=featurewise_center,
         samplewise_center=samplewise_center,
         featurewise_std_normalization=featurewise_std_normalization,
         samplewise_std_normalization=samplewise_std_normalization,
         rotation_range=rotation_range,
         width_shift_range=width_shift_range,
         height_shift_range=height_shift_range,
         shear_range=shear_range,
         zoom_range=zoom_range,
         horizontal_flip=horizontal_flip,
         vertical_flip=vertical_flip,
     )
Example #2
0
    def __init__(
            self,
            merge_mode: CategoricalValue("sum", "mul", "concat", "ave"),
            units: DiscreteValue(32, 1024),
            activation_fn: CategoricalValue("tanh", "sigmoid", "relu",
                                            "linear"),
            recurrent_activation_fn: CategoricalValue("tanh", "sigmoid",
                                                      "relu", "linear"),
            dropout: ContinuousValue(0, 0.5),
            recurrent_dropout: ContinuousValue(0, 0.5),
    ):
        super().__init__(
            layer=_LSTM(
                units=units,
                activation=activation_fn,
                recurrent_activation=recurrent_activation_fn,
                dropout=dropout,
                recurrent_dropout=recurrent_dropout,
                return_sequences=True,
            ),
            merge_mode=merge_mode,
        )

        self.activation_fn = activation_fn
        self.recurrent_activation_fn = recurrent_activation_fn
Example #3
0
 def __init__(
     self,
     extract_word: BooleanValue() = True,
     window_size: DiscreteValue(0, 5) = 0,
 ):
     self.extract_word = extract_word
     self.window_size = window_size
Example #4
0
    def __init__(
        self, cutoff: DiscreteValue(min=0, max=10),
    ):
        self.cutoff = cutoff
        self.tagger = _UnigramTagger
        self.values = dict(cutoff=cutoff)

        NltkTagger.__init__(self)
Example #5
0
 def __init__(
     self,
     # min_length tomará valores entre cero y cinco de forma automática para diferentes pipelines.
     # Este parámetro está permitiendo buscar distintos tamaños de palabra y probar cual de ellos será mejor
     min_length: DiscreteValue(min=0, max=5),
     # lower es un parámetro que en algunos casos será True y en otros False. Podemos utilizarlo
     # para llevar o no a minúsculas el texto.
     lower: BooleanValue(),
 ):
     self.min_length = min_length
     self.lower = lower
Example #6
0
def _get_arg_values(arg, value, cls):
    if isinstance(value, bool):
        return BooleanValue()
    if isinstance(value, int):
        return DiscreteValue(*_get_integer_values(arg, value, cls))
    if isinstance(value, float):
        return ContinuousValue(*_get_float_values(arg, value, cls))
    if isinstance(value, str):
        values = _find_parameter_values(arg, cls)
        return CategoricalValue(*values) if values else None
    return None
Example #7
0
 def __init__(
     self,
     Trained: BooleanValue(),
     N: DiscreteValue(min=500, max=2000),
     C: BooleanValue(),
 ):
     self.Trained = Trained
     self.N = N
     self.C = C
     NltkTrainedTagger.__init__(self)
     _TnT.__init__(self, Trained=Trained, N=N, C=C)
Example #8
0
def test_sample_subset():
    class A:
        def __init__(self, features: Subset("Subset", DiscreteValue(1, 5),
                                            "Hello", 1, None)):
            self.features = features

    g = generate_cfg(A)
    selected_features = g.sample().features
    selected = set([repr(feature) for feature in selected_features])
    assert selected.issubset(
        [repr(feature) for feature in [DiscreteValue(1, 5), "Hello", 1, None]])
Example #9
0
 def __init__(self, filters: DiscreteValue(2, 8),
              kernel_size: CategoricalValue(3, 5, 7),
              l1: ContinuousValue(0, 1e-3), l2: ContinuousValue(0, 1e-3),
              **kwargs):
     self.l1 = l1
     self.l2 = l2
     super().__init__(filters=2**filters,
                      kernel_size=(kernel_size, kernel_size),
                      kernel_regularizer=regularizers.l1_l2(l1=l1, l2=l2),
                      padding="same",
                      data_format="channels_last",
                      **kwargs)
Example #10
0
    def __init__(
            self,
            dm: DiscreteValue(min=0, max=2),
            dbow_words: DiscreteValue(min=-100, max=100),
            dm_concat: DiscreteValue(min=-100, max=100),
            dm_tag_count: DiscreteValue(min=0, max=2),
            alpha: ContinuousValue(min=0.001, max=0.075),
            epochs: DiscreteValue(min=2, max=10),
            window: DiscreteValue(min=2, max=10),
            inner_tokenizer: algorithm(Sentence, Seq[Word]),
            inner_stemmer: algorithm(Word, Stem),
            inner_stopwords: algorithm(Seq[Word], Seq[Word]),
            lowercase: BooleanValue(),
            stopwords_remove: BooleanValue(),
    ):

        self.inner_tokenizer = inner_tokenizer
        self.inner_stemmer = inner_stemmer
        self.inner_stopwords = inner_stopwords
        self.lowercase = lowercase
        self.stopwords_remove = stopwords_remove

        super().__init__(
            dm=dm,
            dbow_words=dbow_words,
            dm_concat=dm_concat,
            dm_tag_count=dm_tag_count,
            alpha=alpha,
            epochs=epochs,
            window=window,
        )
Example #11
0
    def __init__(
        self,
        affix_length: DiscreteValue(min=2, max=6),
        min_stem_length: DiscreteValue(min=1, max=4),
        cutoff: DiscreteValue(min=0, max=10),
        backoff: algorithm(
            Seq[Seq[Word]], Supervised[Seq[Seq[Postag]]], Seq[Seq[Postag]]
        ),
    ):
        self.affix_length = affix_length
        self.min_stem_length = min_stem_length
        self.cutoff = cutoff
        self.backoff = backoff
        self.tagger = _AffixTagger

        self.values = dict(
            affix_length=affix_length,
            min_stem_length=min_stem_length,
            cutoff=cutoff,
            backoff=backoff,
        )

        NltkTagger.__init__(self)
Example #12
0
def _get_integer_values(arg, value, cls):
    if value > 0:
        min_value = 0
        max_value = 2 * value
    elif value == 0:
        min_value = -100
        max_value = 100
    else:
        return None

    # binary search for minimum value
    left = min_value
    right = value

    while left < right:
        current_value = int((left + right) / 2)
        if current_value in [left, right]:
            break

        if _try(cls, arg, current_value):
            right = current_value
        else:
            left = current_value

    min_value = right

    # binary search for maximum value
    left = value
    right = max_value

    while left < right:
        current_value = int((left + right) / 2)
        if current_value in [left, right]:
            break

        if _try(cls, arg, current_value):
            left = current_value
        else:
            right = current_value

    max_value = left

    if min_value < max_value:
        return DiscreteValue(min=min_value, max=max_value)

    return None
Example #13
0
    def __init__(self, units: DiscreteValue(32, 1024),
                 activation_fn: CategoricalValue("tanh", "sigmoid", "relu",
                                                 "linear"),
                 recurrent_activation_fn: CategoricalValue(
                     "tanh", "sigmoid", "relu",
                     "linear"), dropout: ContinuousValue(0, 0.5),
                 recurrent_dropout: ContinuousValue(0, 0.5), **kwargs):
        super().__init__(units=units,
                         activation=activation_fn,
                         recurrent_activation=recurrent_activation_fn,
                         dropout=dropout,
                         recurrent_dropout=recurrent_dropout,
                         return_sequences=False,
                         **kwargs)

        self.activation_fn = activation_fn
        self.recurrent_activation_fn = recurrent_activation_fn
Example #14
0
 def __init__(
         self,
         dm: DiscreteValue(min=0, max=2),
         dbow_words: DiscreteValue(min=-100, max=100),
         dm_concat: DiscreteValue(min=-100, max=100),
         dm_tag_count: DiscreteValue(min=0, max=2),
         alpha: ContinuousValue(min=0.001, max=0.075),
         epochs: DiscreteValue(min=2, max=10),
         window: DiscreteValue(min=2, max=10),
 ):
     self.dm = int(dm)
     self.dbow_words = int(dbow_words)
     self.dm_concat = int(dm_concat)
     self.dm_tag_count = int(dm_tag_count)
     self.alpha = alpha
     self.epochs = int(epochs)
     self.window = int(window)
Example #15
0
 def __init__(self, features: Subset("Subset", DiscreteValue(1, 5),
                                     "Hello", 1, None)):
     self.features = features
Example #16
0
 def __init__(self, output_dim: DiscreteValue(32, 128), **kwargs):
     super().__init__(input_dim=1000, output_dim=output_dim, **kwargs)
Example #17
0
 def __init__(self, ngram: DiscreteValue(1, 3), use_idf: BooleanValue()):
     super().__init__(ngram_range=(1, ngram), use_idf=use_idf)
     self.ngram = ngram
Example #18
0
 def f(x: DiscreteValue(1, 5)):
     pass
Example #19
0
 def __init__(self, x: DiscreteValue(1, 5)):
     pass
Example #20
0
 def __init__(self, n: DiscreteValue(50, 200)):
     super().__init__(n_components=n)
     self.n = n
Example #21
0
 def __init__(self, ngram: DiscreteValue(1, 3)):
     super().__init__(ngram_range=(1, ngram))
     self.ngram = ngram
Example #22
0
 def __init__(self, filters: DiscreteValue(2, 8),
              kernel_size: CategoricalValue(3, 5, 7), **kwargs):
     super().__init__(filters=2**filters,
                      kernel_size=kernel_size,
                      padding="causal",
                      **kwargs)
Example #23
0
 def __init__(
     self,
     features: Subset("Subset", DiscreteValue(1, 5),
                      CategoricalValue("adam", "sgd")),
 ):
     pass
Example #24
0
 def __init__(self, x: DiscreteValue(-10, 10), y: DiscreteValue(-10, 10)):
     self.x = x
     self.y = y
Example #25
0
 def __init__(self, units: DiscreteValue(128, 1024), **kwargs):
     super().__init__(units=units, **kwargs)