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文本相似度(匹配)计算,提供Baseline、训练、推理、指标分析...代码包含TensorFlow/Pytorch双版本

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Text-Similarity

Blog Paper Support Stars Thanks PRs Welcome

Overview

  • Dataset: 中文/英文 Corpus, ☞ 点这里
  • Paper: 相关论文详解, ☞ 点这里
  • The implemented method is as follows:
    • TF-IDF
    • BM25
    • LSH
    • SIF/uSIF
    • RNN Base
    • Bert Base

Dependency

python >= 3.5
TensorFlow 

Usages

TF-IDF

# Example
# Sklearn version
from examples.run_tfidf_sklearn import actuator
actuator("./corpus/chinese/breeno/train.tsv", query1="12 23 4160 276", query2="29 23 169 1495")

# Custom version
from examples.run_tfidf import actuator
actuator("./corpus/chinese/breeno/train.tsv", query1="12 23 4160 276", query2="29 23 169 1495")

# 工具调用
from sim.tf_idf import TFIdf

tokens_list = ["这是 一个 什么 样 的 工具", "..."]
query = ["非常 好用 的 工具"]

tf_idf = TFIdf(tokens_list, split=" ")
print(tf_idf.get_score(query, 0))  # score
print(tf_idf.get_score_list(query, 10))  # [(index, score), ...]
print(tf_idf.weight())  # list or numpy array

BM25

# Example
from examples.run_bm25 import actuator
actuator("./corpus/chinese/breeno/train.tsv", query1="12 23 4160 276", query2="29 23 169 1495")

# 工具调用
from sim.bm25 import BM25

tokens_list = ["这是 一个 什么 样 的 工具", "..."]
query = ["非常 好用 的 工具"]

bm25 = BM25(tokens_list, split=" ")
print(bm25.get_score(query, 0))  # score
print(bm25.get_score_list(query, 10))  # [(index, score), ...]
print(bm25.weight())  # list or numpy array

LSH

from sim.lsh import E2LSH
from sim.lsh import MinHash

e2lsh = E2LSH()
min_hash = MinHash()

candidates = [[3.6216, 8.6661, -2.8073, -0.44699, 0], ...]
query = [-2.7769, -5.6967, 5.9179, 0.37671, 1]
print(e2lsh.search(candidates, query))  # index in candidates
print(min_hash.search(candidates, query))  # index in candidates

SIF

sentences = [["token1", "token2", "..."], ...]
vector = [[[1, 1, 1], [2, 2, 2], [...]], ...]
from sim.sif_usif import SIF
from sim.sif_usif import uSIF

sif = SIF(n_components=5, component_type="svd")
sif.fit(tokens_list=sentences, vector_list=vector)

usif = uSIF(n_components=5, n=1, component_type="svd")
usif.fit(tokens_list=sentences, vector_list=vector)

RNN Base

# TensorFlow version
from examples.tensorflow.run_siamese_rnn import actuator
actuator("./data/config/siamse_rnn.json", execute_type="train")

# Pytorch version
from examples.pytorch.run_siamese_rnn import actuator
actuator("./data/config/siamse_rnn.json", execute_type="train")

Bert Base

# TensorFlow version
from examples.tensorflow.run_basic_bert import actuator
actuator(model_dir="./data/chinese_wwm_L-12_H-768_A-12", execute_type="train")

# Pytorch version

Reference

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