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Add a lazily-initialized tok2vec to the tests and test the current textcat models with it. Fix some additional issues found using this test.
372 lines
13 KiB
Python
372 lines
13 KiB
Python
from functools import partial
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from typing import List, Optional, Tuple, cast
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from thinc.api import (
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Dropout,
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Gelu,
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LayerNorm,
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Linear,
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Logistic,
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Maxout,
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Model,
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ParametricAttention,
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ParametricAttention_v2,
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Relu,
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Softmax,
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SparseLinear,
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SparseLinear_v2,
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chain,
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clone,
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concatenate,
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list2ragged,
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reduce_first,
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reduce_last,
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reduce_max,
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reduce_mean,
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reduce_sum,
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residual,
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resizable,
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softmax_activation,
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with_cpu,
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)
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from thinc.layers.chain import init as init_chain
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from thinc.layers.resizable import resize_linear_weighted, resize_model
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from thinc.types import ArrayXd, Floats2d
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from ...attrs import ORTH
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from ...errors import Errors
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from ...tokens import Doc
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from ...util import registry
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from ..extract_ngrams import extract_ngrams
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from ..staticvectors import StaticVectors
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from .tok2vec import get_tok2vec_width
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NEG_VALUE = -5000
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@registry.architectures("spacy.TextCatCNN.v2")
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def build_simple_cnn_text_classifier(
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tok2vec: Model, exclusive_classes: bool, nO: Optional[int] = None
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) -> Model[List[Doc], Floats2d]:
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"""
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Build a simple CNN text classifier, given a token-to-vector model as inputs.
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If exclusive_classes=True, a softmax non-linearity is applied, so that the
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outputs sum to 1. If exclusive_classes=False, a logistic non-linearity
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is applied instead, so that outputs are in the range [0, 1].
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"""
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return build_reduce_text_classifier(
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tok2vec=tok2vec,
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exclusive_classes=exclusive_classes,
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use_reduce_first=False,
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use_reduce_last=False,
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use_reduce_max=False,
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use_reduce_mean=True,
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nO=nO,
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)
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def resize_and_set_ref(model, new_nO, resizable_layer):
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resizable_layer = resize_model(resizable_layer, new_nO)
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model.set_ref("output_layer", resizable_layer.layers[0])
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model.set_dim("nO", new_nO, force=True)
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return model
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@registry.architectures("spacy.TextCatBOW.v2")
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def build_bow_text_classifier(
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exclusive_classes: bool,
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ngram_size: int,
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no_output_layer: bool,
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nO: Optional[int] = None,
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) -> Model[List[Doc], Floats2d]:
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return _build_bow_text_classifier(
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exclusive_classes=exclusive_classes,
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ngram_size=ngram_size,
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no_output_layer=no_output_layer,
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nO=nO,
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sparse_linear=SparseLinear(nO=nO),
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)
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@registry.architectures("spacy.TextCatBOW.v3")
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def build_bow_text_classifier_v3(
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exclusive_classes: bool,
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ngram_size: int,
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no_output_layer: bool,
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length: int = 262144,
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nO: Optional[int] = None,
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) -> Model[List[Doc], Floats2d]:
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if length < 1:
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raise ValueError(Errors.E1056.format(length=length))
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# Find k such that 2**(k-1) < length <= 2**k.
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length = 2 ** (length - 1).bit_length()
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return _build_bow_text_classifier(
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exclusive_classes=exclusive_classes,
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ngram_size=ngram_size,
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no_output_layer=no_output_layer,
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nO=nO,
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sparse_linear=SparseLinear_v2(nO=nO, length=length),
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)
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def _build_bow_text_classifier(
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exclusive_classes: bool,
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ngram_size: int,
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no_output_layer: bool,
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sparse_linear: Model[Tuple[ArrayXd, ArrayXd, ArrayXd], ArrayXd],
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nO: Optional[int] = None,
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) -> Model[List[Doc], Floats2d]:
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fill_defaults = {"b": 0, "W": 0}
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with Model.define_operators({">>": chain}):
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output_layer = None
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if not no_output_layer:
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fill_defaults["b"] = NEG_VALUE
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output_layer = softmax_activation() if exclusive_classes else Logistic()
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resizable_layer: Model[Floats2d, Floats2d] = resizable(
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sparse_linear,
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resize_layer=partial(resize_linear_weighted, fill_defaults=fill_defaults),
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)
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model = extract_ngrams(ngram_size, attr=ORTH) >> resizable_layer
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model = with_cpu(model, model.ops)
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if output_layer:
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model = model >> with_cpu(output_layer, output_layer.ops)
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if nO is not None:
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model.set_dim("nO", cast(int, nO))
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model.set_ref("output_layer", sparse_linear)
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model.attrs["multi_label"] = not exclusive_classes
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model.attrs["resize_output"] = partial(
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resize_and_set_ref, resizable_layer=resizable_layer
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)
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return model
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@registry.architectures("spacy.TextCatEnsemble.v2")
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def build_text_classifier_v2(
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tok2vec: Model[List[Doc], List[Floats2d]],
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linear_model: Model[List[Doc], Floats2d],
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nO: Optional[int] = None,
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) -> Model[List[Doc], Floats2d]:
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# TODO: build the model with _build_parametric_attention_with_residual_nonlinear
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# in spaCy v4. We don't do this in spaCy v3 to preserve model
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# compatibility.
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exclusive_classes = not linear_model.attrs["multi_label"]
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with Model.define_operators({">>": chain, "|": concatenate}):
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width = tok2vec.maybe_get_dim("nO")
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attention_layer = ParametricAttention(width)
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maxout_layer = Maxout(nO=width, nI=width)
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norm_layer = LayerNorm(nI=width)
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cnn_model = (
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tok2vec
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>> list2ragged()
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>> attention_layer
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>> reduce_sum()
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>> residual(maxout_layer >> norm_layer >> Dropout(0.0))
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)
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nO_double = nO * 2 if nO else None
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if exclusive_classes:
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output_layer = Softmax(nO=nO, nI=nO_double)
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else:
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output_layer = Linear(nO=nO, nI=nO_double) >> Logistic()
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model = (linear_model | cnn_model) >> output_layer
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model.set_ref("tok2vec", tok2vec)
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if model.has_dim("nO") is not False and nO is not None:
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model.set_dim("nO", cast(int, nO))
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model.set_ref("output_layer", linear_model.get_ref("output_layer"))
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model.set_ref("attention_layer", attention_layer)
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model.set_ref("maxout_layer", maxout_layer)
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model.set_ref("norm_layer", norm_layer)
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model.attrs["multi_label"] = not exclusive_classes
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model.init = init_ensemble_textcat # type: ignore[assignment]
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return model
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def init_ensemble_textcat(model, X, Y) -> Model:
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# When tok2vec is lazily initialized, we need to initialize it before
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# the rest of the chain to ensure that we can get its width.
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tok2vec = model.get_ref("tok2vec")
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tok2vec.initialize(X)
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tok2vec_width = get_tok2vec_width(model)
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model.get_ref("attention_layer").set_dim("nO", tok2vec_width)
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model.get_ref("maxout_layer").set_dim("nO", tok2vec_width)
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model.get_ref("maxout_layer").set_dim("nI", tok2vec_width)
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model.get_ref("norm_layer").set_dim("nI", tok2vec_width)
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model.get_ref("norm_layer").set_dim("nO", tok2vec_width)
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init_chain(model, X, Y)
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return model
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@registry.architectures("spacy.TextCatLowData.v1")
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def build_text_classifier_lowdata(
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width: int, dropout: Optional[float], nO: Optional[int] = None
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) -> Model[List[Doc], Floats2d]:
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# Don't document this yet, I'm not sure it's right.
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# Note, before v.3, this was the default if setting "low_data" and "pretrained_dims"
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with Model.define_operators({">>": chain, "**": clone}):
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model = (
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StaticVectors(width)
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>> list2ragged()
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>> ParametricAttention(width)
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>> reduce_sum()
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>> residual(Relu(width, width)) ** 2
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>> Linear(nO, width)
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)
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if dropout:
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model = model >> Dropout(dropout)
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model = model >> Logistic()
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return model
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@registry.architectures("spacy.TextCatParametricAttention.v1")
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def build_textcat_parametric_attention_v1(
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tok2vec: Model[List[Doc], List[Floats2d]],
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exclusive_classes: bool,
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nO: Optional[int] = None,
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) -> Model[List[Doc], Floats2d]:
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width = tok2vec.maybe_get_dim("nO")
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parametric_attention = _build_parametric_attention_with_residual_nonlinear(
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tok2vec=tok2vec,
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nonlinear_layer=Maxout(nI=width, nO=width),
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key_transform=Gelu(nI=width, nO=width),
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)
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with Model.define_operators({">>": chain}):
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if exclusive_classes:
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output_layer = Softmax(nO=nO)
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else:
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output_layer = Linear(nO=nO) >> Logistic()
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model = parametric_attention >> output_layer
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if model.has_dim("nO") is not False and nO is not None:
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model.set_dim("nO", cast(int, nO))
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model.set_ref("output_layer", output_layer)
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model.attrs["multi_label"] = not exclusive_classes
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return model
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def _build_parametric_attention_with_residual_nonlinear(
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*,
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tok2vec: Model[List[Doc], List[Floats2d]],
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nonlinear_layer: Model[Floats2d, Floats2d],
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key_transform: Optional[Model[Floats2d, Floats2d]] = None,
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) -> Model[List[Doc], Floats2d]:
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with Model.define_operators({">>": chain, "|": concatenate}):
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width = tok2vec.maybe_get_dim("nO")
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attention_layer = ParametricAttention_v2(nO=width, key_transform=key_transform)
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norm_layer = LayerNorm(nI=width)
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parametric_attention = (
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tok2vec
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>> list2ragged()
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>> attention_layer
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>> reduce_sum()
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>> residual(nonlinear_layer >> norm_layer >> Dropout(0.0))
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)
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parametric_attention.init = _init_parametric_attention_with_residual_nonlinear
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parametric_attention.set_ref("tok2vec", tok2vec)
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parametric_attention.set_ref("attention_layer", attention_layer)
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parametric_attention.set_ref("key_transform", key_transform)
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parametric_attention.set_ref("nonlinear_layer", nonlinear_layer)
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parametric_attention.set_ref("norm_layer", norm_layer)
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return parametric_attention
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def _init_parametric_attention_with_residual_nonlinear(model, X, Y) -> Model:
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# When tok2vec is lazily initialized, we need to initialize it before
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# the rest of the chain to ensure that we can get its width.
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tok2vec = model.get_ref("tok2vec")
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tok2vec.initialize(X)
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tok2vec_width = get_tok2vec_width(model)
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model.get_ref("attention_layer").set_dim("nO", tok2vec_width)
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model.get_ref("key_transform").set_dim("nI", tok2vec_width)
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model.get_ref("key_transform").set_dim("nO", tok2vec_width)
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model.get_ref("nonlinear_layer").set_dim("nI", tok2vec_width)
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model.get_ref("nonlinear_layer").set_dim("nO", tok2vec_width)
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model.get_ref("norm_layer").set_dim("nI", tok2vec_width)
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model.get_ref("norm_layer").set_dim("nO", tok2vec_width)
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init_chain(model, X, Y)
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return model
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@registry.architectures("spacy.TextCatReduce.v1")
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def build_reduce_text_classifier(
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tok2vec: Model,
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exclusive_classes: bool,
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use_reduce_first: bool,
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use_reduce_last: bool,
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use_reduce_max: bool,
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use_reduce_mean: bool,
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nO: Optional[int] = None,
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) -> Model[List[Doc], Floats2d]:
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"""Build a model that classifies pooled `Doc` representations.
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Pooling is performed using reductions. Reductions are concatenated when
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multiple reductions are used.
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tok2vec (Model): the tok2vec layer to pool over.
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exclusive_classes (bool): Whether or not classes are mutually exclusive.
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use_reduce_first (bool): Pool by using the hidden representation of the
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first token of a `Doc`.
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use_reduce_last (bool): Pool by using the hidden representation of the
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last token of a `Doc`.
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use_reduce_max (bool): Pool by taking the maximum values of the hidden
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representations of a `Doc`.
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use_reduce_mean (bool): Pool by taking the mean of all hidden
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representations of a `Doc`.
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nO (Optional[int]): Number of classes.
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"""
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fill_defaults = {"b": 0, "W": 0}
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reductions = []
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if use_reduce_first:
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reductions.append(reduce_first())
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if use_reduce_last:
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reductions.append(reduce_last())
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if use_reduce_max:
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reductions.append(reduce_max())
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if use_reduce_mean:
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reductions.append(reduce_mean())
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if not len(reductions):
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raise ValueError(Errors.E1057)
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with Model.define_operators({">>": chain}):
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cnn = tok2vec >> list2ragged() >> concatenate(*reductions)
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nO_tok2vec = tok2vec.maybe_get_dim("nO")
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nI = nO_tok2vec * len(reductions) if nO_tok2vec is not None else None
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if exclusive_classes:
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output_layer = Softmax(nO=nO, nI=nI)
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fill_defaults["b"] = NEG_VALUE
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resizable_layer: Model = resizable(
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output_layer,
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resize_layer=partial(
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resize_linear_weighted, fill_defaults=fill_defaults
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),
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)
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model = cnn >> resizable_layer
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else:
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output_layer = Linear(nO=nO, nI=nI)
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resizable_layer = resizable(
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output_layer,
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resize_layer=partial(
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resize_linear_weighted, fill_defaults=fill_defaults
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),
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)
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model = cnn >> resizable_layer >> Logistic()
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model.set_ref("output_layer", output_layer)
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model.attrs["resize_output"] = partial(
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resize_and_set_ref,
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resizable_layer=resizable_layer,
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)
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model.set_ref("tok2vec", tok2vec)
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if nO is not None:
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model.set_dim("nO", cast(int, nO))
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model.attrs["multi_label"] = not exclusive_classes
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return model
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