matlab 高斯过程回归模型 matlab Gaussian process regression model

上传者: lingyu666hapy | 上传时间: 2019-12-21 18:51:17 | 文件大小: 833KB | 文件类型: rar
高斯过程回归及分类的代码,内容全,有实例,注释清晰。包括分类系列和预测回归系列,值得感兴趣的同学学习借鉴。里面有对应的数据和demo程序,程序可运行,MATLAB2014a下测试通过,其他版本没有测试。(网页版的0

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评论信息

  • supertramplzu :
    感谢分享代码
    2019-08-19
  • qq_39219298 :
    不怎么好用
    2017-11-22
  • chubadl :
    非常好用,感谢分享
    2017-11-16

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