"""Train for CONLL 2017 UD treebank evaluation. Takes .conllu files, writes .conllu format for development data, allowing the official scorer to be used. """ from __future__ import unicode_literals import plac import tqdm import attr from pathlib import Path import re import sys import json import spacy import spacy.util from spacy.tokens import Token, Doc from spacy.gold import GoldParse from spacy.syntax.nonproj import projectivize from collections import defaultdict, Counter from timeit import default_timer as timer from spacy.matcher import Matcher import itertools import random import numpy.random import conll17_ud_eval import spacy.lang.zh import spacy.lang.ja spacy.lang.zh.Chinese.Defaults.use_jieba = False spacy.lang.ja.Japanese.Defaults.use_janome = False random.seed(0) numpy.random.seed(0) def minibatch_by_words(items, size=5000): random.shuffle(items) if isinstance(size, int): size_ = itertools.repeat(size) else: size_ = size items = iter(items) while True: batch_size = next(size_) batch = [] while batch_size >= 0: try: doc, gold = next(items) except StopIteration: if batch: yield batch return batch_size -= len(doc) batch.append((doc, gold)) if batch: yield batch else: break ################ # Data reading # ################ space_re = re.compile("\s+") def split_text(text): return [space_re.sub(" ", par.strip()) for par in text.split("\n\n")] def read_data( nlp, conllu_file, text_file, raw_text=True, oracle_segments=False, max_doc_length=None, limit=None, ): """Read the CONLLU format into (Doc, GoldParse) tuples. If raw_text=True, include Doc objects created using nlp.make_doc and then aligned against the gold-standard sequences. If oracle_segments=True, include Doc objects created from the gold-standard segments. At least one must be True.""" if not raw_text and not oracle_segments: raise ValueError("At least one of raw_text or oracle_segments must be True") paragraphs = split_text(text_file.read()) conllu = read_conllu(conllu_file) # sd is spacy doc; cd is conllu doc # cs is conllu sent, ct is conllu token docs = [] golds = [] for doc_id, (text, cd) in enumerate(zip(paragraphs, conllu)): sent_annots = [] for cs in cd: sent = defaultdict(list) for id_, word, lemma, pos, tag, morph, head, dep, _, space_after in cs: if "." in id_: continue if "-" in id_: continue id_ = int(id_) - 1 head = int(head) - 1 if head != "0" else id_ sent["words"].append(word) sent["tags"].append(tag) sent["heads"].append(head) sent["deps"].append("ROOT" if dep == "root" else dep) sent["spaces"].append(space_after == "_") sent["entities"] = ["-"] * len(sent["words"]) sent["heads"], sent["deps"] = projectivize(sent["heads"], sent["deps"]) if oracle_segments: docs.append(Doc(nlp.vocab, words=sent["words"], spaces=sent["spaces"])) golds.append(GoldParse(docs[-1], **sent)) sent_annots.append(sent) if raw_text and max_doc_length and len(sent_annots) >= max_doc_length: doc, gold = _make_gold(nlp, None, sent_annots) sent_annots = [] docs.append(doc) golds.append(gold) if limit and len(docs) >= limit: return docs, golds if raw_text and sent_annots: doc, gold = _make_gold(nlp, None, sent_annots) docs.append(doc) golds.append(gold) if limit and len(docs) >= limit: return docs, golds return docs, golds def read_conllu(file_): docs = [] sent = [] doc = [] for line in file_: if line.startswith("# newdoc"): if doc: docs.append(doc) doc = [] elif line.startswith("#"): continue elif not line.strip(): if sent: doc.append(sent) sent = [] else: sent.append(list(line.strip().split("\t"))) if len(sent[-1]) != 10: print(repr(line)) raise ValueError if sent: doc.append(sent) if doc: docs.append(doc) return docs def _make_gold(nlp, text, sent_annots): # Flatten the conll annotations, and adjust the head indices flat = defaultdict(list) for sent in sent_annots: flat["heads"].extend(len(flat["words"]) + head for head in sent["heads"]) for field in ["words", "tags", "deps", "entities", "spaces"]: flat[field].extend(sent[field]) # Construct text if necessary assert len(flat["words"]) == len(flat["spaces"]) if text is None: text = "".join( word + " " * space for word, space in zip(flat["words"], flat["spaces"]) ) doc = nlp.make_doc(text) flat.pop("spaces") gold = GoldParse(doc, **flat) return doc, gold ############################# # Data transforms for spaCy # ############################# def golds_to_gold_tuples(docs, golds): """Get out the annoying 'tuples' format used by begin_training, given the GoldParse objects.""" tuples = [] for doc, gold in zip(docs, golds): text = doc.text ids, words, tags, heads, labels, iob = zip(*gold.orig_annot) sents = [((ids, words, tags, heads, labels, iob), [])] tuples.append((text, sents)) return tuples ############## # Evaluation # ############## def evaluate(nlp, text_loc, gold_loc, sys_loc, limit=None): with text_loc.open("r", encoding="utf8") as text_file: texts = split_text(text_file.read()) docs = list(nlp.pipe(texts)) with sys_loc.open("w", encoding="utf8") as out_file: write_conllu(docs, out_file) with gold_loc.open("r", encoding="utf8") as gold_file: gold_ud = conll17_ud_eval.load_conllu(gold_file) with sys_loc.open("r", encoding="utf8") as sys_file: sys_ud = conll17_ud_eval.load_conllu(sys_file) scores = conll17_ud_eval.evaluate(gold_ud, sys_ud) return scores def write_conllu(docs, file_): merger = Matcher(docs[0].vocab) merger.add("SUBTOK", None, [{"DEP": "subtok", "op": "+"}]) for i, doc in enumerate(docs): matches = merger(doc) spans = [doc[start : end + 1] for _, start, end in matches] offsets = [(span.start_char, span.end_char) for span in spans] for start_char, end_char in offsets: doc.merge(start_char, end_char) file_.write("# newdoc id = {i}\n".format(i=i)) for j, sent in enumerate(doc.sents): file_.write("# sent_id = {i}.{j}\n".format(i=i, j=j)) file_.write("# text = {text}\n".format(text=sent.text)) for k, token in enumerate(sent): file_.write(token._.get_conllu_lines(k) + "\n") file_.write("\n") def print_progress(itn, losses, ud_scores): fields = { "dep_loss": losses.get("parser", 0.0), "tag_loss": losses.get("tagger", 0.0), "words": ud_scores["Words"].f1 * 100, "sents": ud_scores["Sentences"].f1 * 100, "tags": ud_scores["XPOS"].f1 * 100, "uas": ud_scores["UAS"].f1 * 100, "las": ud_scores["LAS"].f1 * 100, } header = ["Epoch", "Loss", "LAS", "UAS", "TAG", "SENT", "WORD"] if itn == 0: print("\t".join(header)) tpl = "\t".join( ( "{:d}", "{dep_loss:.1f}", "{las:.1f}", "{uas:.1f}", "{tags:.1f}", "{sents:.1f}", "{words:.1f}", ) ) print(tpl.format(itn, **fields)) # def get_sent_conllu(sent, sent_id): # lines = ["# sent_id = {sent_id}".format(sent_id=sent_id)] def get_token_conllu(token, i): if token._.begins_fused: n = 1 while token.nbor(n)._.inside_fused: n += 1 id_ = "%d-%d" % (i, i + n) lines = [id_, token.text, "_", "_", "_", "_", "_", "_", "_", "_"] else: lines = [] if token.head.i == token.i: head = 0 else: head = i + (token.head.i - token.i) + 1 fields = [ str(i + 1), token.text, token.lemma_, token.pos_, token.tag_, "_", str(head), token.dep_.lower(), "_", "_", ] lines.append("\t".join(fields)) return "\n".join(lines) Token.set_extension("get_conllu_lines", method=get_token_conllu) Token.set_extension("begins_fused", default=False) Token.set_extension("inside_fused", default=False) ################## # Initialization # ################## def load_nlp(corpus, config): lang = corpus.split("_")[0] nlp = spacy.blank(lang) if config.vectors: nlp.vocab.from_disk(config.vectors / "vocab") return nlp def initialize_pipeline(nlp, docs, golds, config): nlp.add_pipe(nlp.create_pipe("parser")) if config.multitask_tag: nlp.parser.add_multitask_objective("tag") if config.multitask_sent: nlp.parser.add_multitask_objective("sent_start") nlp.parser.moves.add_action(2, "subtok") nlp.add_pipe(nlp.create_pipe("tagger")) for gold in golds: for tag in gold.tags: if tag is not None: nlp.tagger.add_label(tag) # Replace labels that didn't make the frequency cutoff actions = set(nlp.parser.labels) label_set = set([act.split("-")[1] for act in actions if "-" in act]) for gold in golds: for i, label in enumerate(gold.labels): if label is not None and label not in label_set: gold.labels[i] = label.split("||")[0] return nlp.begin_training(lambda: golds_to_gold_tuples(docs, golds)) ######################## # Command line helpers # ######################## @attr.s class Config(object): vectors = attr.ib(default=None) max_doc_length = attr.ib(default=10) multitask_tag = attr.ib(default=True) multitask_sent = attr.ib(default=True) nr_epoch = attr.ib(default=30) batch_size = attr.ib(default=1000) dropout = attr.ib(default=0.2) @classmethod def load(cls, loc): with Path(loc).open("r", encoding="utf8") as file_: cfg = json.load(file_) return cls(**cfg) class Dataset(object): def __init__(self, path, section): self.path = path self.section = section self.conllu = None self.text = None for file_path in self.path.iterdir(): name = file_path.parts[-1] if section in name and name.endswith("conllu"): self.conllu = file_path elif section in name and name.endswith("txt"): self.text = file_path if self.conllu is None: msg = "Could not find .txt file in {path} for {section}" raise IOError(msg.format(section=section, path=path)) if self.text is None: msg = "Could not find .txt file in {path} for {section}" self.lang = self.conllu.parts[-1].split("-")[0].split("_")[0] class TreebankPaths(object): def __init__(self, ud_path, treebank, **cfg): self.train = Dataset(ud_path / treebank, "train") self.dev = Dataset(ud_path / treebank, "dev") self.lang = self.train.lang @plac.annotations( ud_dir=("Path to Universal Dependencies corpus", "positional", None, Path), corpus=( "UD corpus to train and evaluate on, e.g. en, es_ancora, etc", "positional", None, str, ), parses_dir=("Directory to write the development parses", "positional", None, Path), config=("Path to json formatted config file", "positional", None, Config.load), limit=("Size limit", "option", "n", int), ) def main(ud_dir, parses_dir, config, corpus, limit=0): paths = TreebankPaths(ud_dir, corpus) if not (parses_dir / corpus).exists(): (parses_dir / corpus).mkdir() print("Train and evaluate", corpus, "using lang", paths.lang) nlp = load_nlp(paths.lang, config) docs, golds = read_data( nlp, paths.train.conllu.open(), paths.train.text.open(), max_doc_length=config.max_doc_length, limit=limit, ) optimizer = initialize_pipeline(nlp, docs, golds, config) for i in range(config.nr_epoch): docs = [nlp.make_doc(doc.text) for doc in docs] batches = minibatch_by_words(list(zip(docs, golds)), size=config.batch_size) losses = {} n_train_words = sum(len(doc) for doc in docs) with tqdm.tqdm(total=n_train_words, leave=False) as pbar: for batch in batches: batch_docs, batch_gold = zip(*batch) pbar.update(sum(len(doc) for doc in batch_docs)) nlp.update( batch_docs, batch_gold, sgd=optimizer, drop=config.dropout, losses=losses, ) out_path = parses_dir / corpus / "epoch-{i}.conllu".format(i=i) with nlp.use_params(optimizer.averages): scores = evaluate(nlp, paths.dev.text, paths.dev.conllu, out_path) print_progress(i, losses, scores) if __name__ == "__main__": plac.call(main)