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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A sparsity driven kernel machine based on minimizing a generalization error bound
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A sparsity driven kernel machine based on minimizing a generalization error bound

机译:基于最小化泛化误差范围的稀疏驱动内核计算机

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摘要

A new sparsity driven kernel classifier is presented based on the minimization of a recently derived data-dependent generalization error bound. The objective function consists of the usual hinge loss function penalizing training errors and a concave penalty function of the expansion coefficients. The problem of minimizing the non-convex bound is addressed by a successive linearization approach, whereby the problem is transformed into a sequence of linear programs. The algorithm produced comparable error rates to the standard support vector machine but significantly reduced the number of support vectors and the concomitant classification time.
机译:基于最近导出的数据相关的泛化误差范围的最小化,提出了一种新的稀疏驱动内核分类器。目标函数由惩罚训练误差的常规铰链损耗函数和扩展系数的凹罚函数组成。通过连续线性化方法解决了使非凸边界最小化的问题,由此将问题转化为一系列线性程序。该算法产生的错误率与标准支持向量机相当,但是大大减少了支持向量的数量和相应的分类时间。

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