背景
[97.5%准确率的深度学习中文分词(字嵌入+Bi-LSTM+CRF)] (https://mp.weixin.qq.com/s?__biz=MjM5ODIzNDQ3Mw==&mid=2649966433&idx=1&sn=be6c0e5485003d6f33804261df7c3ecf&chksm=beca376789bdbe71ef28c509776132d96e7e662be0adf0460cfd9963ad782b32d2d5787ff499&mpshare=1&scene=2&srcid=1122cZnCbEKZCCzf9LOSAyZ6&from=timeline&key=&ascene=2&uin=&devicetype=android-19&version=26031f30&nettype=WIFI)
构建
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安装好bazel代码构建工具,clone下来tensorflow项目代码,配置好(./configure)
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clone 本项目地址到tensorflow同级目录,切换到本项目代码目录,运行./configure
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编译后台服务
bazel build //kcws/cc:seg_backend_api
训练
pyton kcws/train/process_anno_file <语料目录> chars_for_w2v.txt
使用word2vec 训练 chars_for_w2v (注意-binary 0),得到字嵌入结果vec.txt
bazel build kcws/train:generate_training
./bazel-bin/kcws/train/generate_training vec.txt <语料目录> all.txt
python kcws/train/filter_sentence.py all.txt (得到train.txt , test.txt)
- 安装好tensorflow,切换到kcws代码目录,运行:
python kcws/train/train_cws_lstm.py --word2vec_path vec.txt --train_data_path <绝对路径到train.txt> --test_data_path test.txt --max_sentence_len 80 --learning_rate 0.001