发明授权
US07788193B2 Kernels and methods for selecting kernels for use in learning machines
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内核和选择用于学习机器的内核的方法
- 专利标题: Kernels and methods for selecting kernels for use in learning machines
- 专利标题(中): 内核和选择用于学习机器的内核的方法
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申请号: US11929354申请日: 2007-10-30
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公开(公告)号: US07788193B2公开(公告)日: 2010-08-31
- 发明人: Peter L. Bartlett , André Elisseeff , Bernhard Schoelkopf , Olivier Chapelle
- 申请人: Peter L. Bartlett , André Elisseeff , Bernhard Schoelkopf , Olivier Chapelle
- 申请人地址: US GA Savannah
- 专利权人: Health Discovery Corporation
- 当前专利权人: Health Discovery Corporation
- 当前专利权人地址: US GA Savannah
- 代理机构: Procopio, Cory, Hargreaves & Savitch, LLP
- 代理商 Eleanor M. Musick
- 主分类号: G06F15/18
- IPC分类号: G06F15/18 ; G06F17/00 ; G06N5/00
摘要:
Learning machines, such as support vector machines, are used to analyze datasets to recognize patterns within the dataset using kernels that are selected according to the nature of the data to be analyzed. Where the datasets possesses structural characteristics, locational kernels can be utilized to provide measures of similarity among data points within the dataset. The locational kernels are then combined to generate a decision function, or kernel, that can be used to analyze the dataset. Where an invariance transformation or noise is present, tangent vectors are defined to identify relationships between the invariance or noise and the data points. A covariance matrix is formed using the tangent vectors, then used in generation of the kernel.
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