深度信念网络matlab代码

上传者: hzq20081121107 | 上传时间: 2019-12-21 19:56:14 | 文件大小: 42.66MB | 文件类型: rar
深度信念网络,有代码,有实例,有数据。 用于深度网络预训练。

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评论信息

  • NEONGOD111 :
    不建议下载,不值这个分,里面的用的还是伯努利玻尔兹曼机,可以在网上搜DeepLearning toolbox,比这个好,而且免费
    2019-05-27
  • dx_csdn :
    很实用,帮助很大,谢谢
    2019-04-19
  • forget_everything :
    入门学习,有一定的参考价值,谢谢分享
    2019-04-05
  • SUNTANGLE :
    感谢分享,可以直接使用。
    2018-10-24
  • weixin_42611002 :
    有一起学习的深度置信网络的朋友么?遇到了好多问题,可以探讨的话加QQ,1401614851,谢谢
    2018-08-11

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