spaCy/spacy/pipeline/hooks.py
Ines Montani a9c6104047 Component decorator and component analysis (#4517)
* Add work in progress

* Update analysis helpers and component decorator

* Fix porting of docstrings for Python 2

* Fix docstring stuff on Python 2

* Support meta factories when loading model

* Put auto pipeline analysis behind flag for now

* Analyse pipes on remove_pipe and replace_pipe

* Move analysis to root for now

Try to find a better place for it, but it needs to go for now to avoid circular imports

* Simplify decorator

Don't return a wrapped class and instead just write to the object

* Update existing components and factories

* Add condition in factory for classes vs. functions

* Add missing from_nlp classmethods

* Add "retokenizes" to printed overview

* Update assigns/requires declarations of builtins

* Only return data if no_print is enabled

* Use multiline table for overview

* Don't support Span

* Rewrite errors/warnings and move them to spacy.errors
2019-10-27 13:35:49 +01:00

100 lines
3.4 KiB
Python

# coding: utf8
from __future__ import unicode_literals
from thinc.t2v import Pooling, max_pool, mean_pool
from thinc.neural._classes.difference import Siamese, CauchySimilarity
from .pipes import Pipe
from ..language import component
from .._ml import link_vectors_to_models
@component("sentencizer_hook", assigns=["doc.user_hooks"])
class SentenceSegmenter(object):
"""A simple spaCy hook, to allow custom sentence boundary detection logic
(that doesn't require the dependency parse). To change the sentence
boundary detection strategy, pass a generator function `strategy` on
initialization, or assign a new strategy to the .strategy attribute.
Sentence detection strategies should be generators that take `Doc` objects
and yield `Span` objects for each sentence.
"""
def __init__(self, vocab, strategy=None):
self.vocab = vocab
if strategy is None or strategy == "on_punct":
strategy = self.split_on_punct
self.strategy = strategy
def __call__(self, doc):
doc.user_hooks["sents"] = self.strategy
return doc
@staticmethod
def split_on_punct(doc):
start = 0
seen_period = False
for i, token in enumerate(doc):
if seen_period and not token.is_punct:
yield doc[start : token.i]
start = token.i
seen_period = False
elif token.text in [".", "!", "?"]:
seen_period = True
if start < len(doc):
yield doc[start : len(doc)]
@component("similarity", assigns=["doc.user_hooks"])
class SimilarityHook(Pipe):
"""
Experimental: A pipeline component to install a hook for supervised
similarity into `Doc` objects. Requires a `Tensorizer` to pre-process
documents. The similarity model can be any object obeying the Thinc `Model`
interface. By default, the model concatenates the elementwise mean and
elementwise max of the two tensors, and compares them using the
Cauchy-like similarity function from Chen (2013):
>>> similarity = 1. / (1. + (W * (vec1-vec2)**2).sum())
Where W is a vector of dimension weights, initialized to 1.
"""
def __init__(self, vocab, model=True, **cfg):
self.vocab = vocab
self.model = model
self.cfg = dict(cfg)
@classmethod
def Model(cls, length):
return Siamese(Pooling(max_pool, mean_pool), CauchySimilarity(length))
def __call__(self, doc):
"""Install similarity hook"""
doc.user_hooks["similarity"] = self.predict
return doc
def pipe(self, docs, **kwargs):
for doc in docs:
yield self(doc)
def predict(self, doc1, doc2):
self.require_model()
return self.model.predict([(doc1, doc2)])
def update(self, doc1_doc2, golds, sgd=None, drop=0.0):
self.require_model()
sims, bp_sims = self.model.begin_update(doc1_doc2, drop=drop)
def begin_training(self, _=tuple(), pipeline=None, sgd=None, **kwargs):
"""Allocate model, using width from tensorizer in pipeline.
gold_tuples (iterable): Gold-standard training data.
pipeline (list): The pipeline the model is part of.
"""
if self.model is True:
self.model = self.Model(pipeline[0].model.nO)
link_vectors_to_models(self.vocab)
if sgd is None:
sgd = self.create_optimizer()
return sgd