首页> 外文会议>13th European Conference on Machine Learning, Aug 19-23, 2002, Helsinki, Finland >A Kernel Approach for Learning from almost Orthogonal Patterns
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A Kernel Approach for Learning from almost Orthogonal Patterns

机译:一种从几乎正交的模式学习的内核方法

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摘要

In kernel methods, all the information about the training data is contained in the Gram matrix. If this matrix has large diagonal values, which arises for many types of kernels, then kernel methods do not perform well. We propose and test several methods for dealing with this problem by reducing the dynamic range of the matrix while preserving the positive definiteness of the Hessian of the quadratic programming problem that one has to solve when training a Support Vector Machine.
机译:在核方法中,有关训练数据的所有信息都包含在Gram矩阵中。如果此矩阵具有较大的对角线值(对许多类型的内核都会出现),则内核方法的性能将不佳。我们提出并测试了几种通过减小矩阵的动态范围并同时保留二次规划问题的Hessian正定性来解决该问题的方法,该二次编程问题是训练支持向量机时必须解决的问题。

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