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Kernels and methods for selecting kernels for use in learning machines

机译:选择用于学习机器的内核的内核和方法

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 invariance transformations 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 for recognizing patterns in the dataset.
机译:学习机(例如支持向量机)用于分析数据集,以使用根据要分析的数据的性质选择的内核识别数据集内的模式。如果数据集具有结构特征,则可以使用位置核来提供数据集中数据点之间的相似性度量。然后将位置内核组合在一起,以生成可用于分析数据集的决策函数或内核。在存在不变性变换或噪声的情况下,定义切线向量以标识不变性或噪声与数据点之间的关系。使用切向量形成协方差矩阵,然后将其用于内核生成以识别数据集中的模式。

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