Python-基于知识图谱的问答系统BERT做命名实体识别和句子相似度分为online和outline模式

上传者: 39841882 | 上传时间: 2019-12-21 21:41:06 | 文件大小: 1.51MB | 文件类型: zip
基于知识图谱的问答系统,BERT做命名实体识别和句子相似度,分为online和outline模式

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评论信息

  • weixin_39609852 :
    都是代码,连个介绍都没有,完全是从github上搞下来的
    2020-09-14
  • weixin_39609852 :
    都是代码,连个介绍都没有,完全是从github上搞下来的
    2020-09-14
  • weixin_38746926 :
    非常好的资源,值得学习,感谢分享
    2020-03-26
  • weixin_38746926 :
    非常好的资源,值得学习,感谢分享
    2020-03-26

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