jcseg - Jcseg是基于mmseg算法的一个轻量级中文分词器,同时集成了关键字提取,关键短语提取,关键句子提取和文章自动摘要等功能,并且提供了一个基于Jetty的web服务器,方便各大语言直接http调用,同时提供了最新版本的lucene, solr, elasticsearch的分词接口!

  •        77

A lightweight open source chinese tokenizer with keywords, key sentences, summary extracts support, offered the latest lucene,solr,elasticsearch API.

http://gitee.com/lionsoul/jcseg
https://github.com/lionsoul2014/jcseg
http://git.oschina.net/lionsoul/jcseg/

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