matlab中拟合中心线的代码-gp:MATLAB中的高斯过程软件

上传者: 38678521 | 上传时间: 2023-02-08 13:02:44 | 文件大小: 3.64MB | 文件类型: ZIP
matlab中拟合中心线的代码高斯过程软件 本页介绍了如何使用高斯过程软件(GP)的示例。 发布信息 当前版本为0.137 。 除了下载GP软件外,您还需要获得下面指定的工具箱。 工具箱 版本 3.3 0.136 0.162 0.22 0.138 0.136 0.132 0.1371 0.226 0.141 对gpLoadResult进行了较小的更新,以允许使用不同的函数来加载数据。 版本0.136 更改了gpReadFromFID以与C ++代码兼容。 版本0.135 Carl Henrik Ek进行了修改,以实现与SGPLVM工具箱的兼容性。 版本0.134 更新以允许在写入磁盘时解构模型文件(gpWriteResult,gpLoadResult,gpDeconstruct,gpReconstruct)。 版本0.133 使用Interspeech综合演示数据的内部乘积矩阵来运行GPLVM / GP的更新。 版本0.132 从牛津工具箱转移的示例,从Titsias的变分近似添加为“ dtcvar”的选项。 版本0.131 进行更改以允许与SGPLVM和NCCA工具箱兼容。 版本0.

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