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Sparse posterior probability support vector machines

机译:稀疏后验概率支持向量机

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Posterior probability support vector machines (PPSVMs) are proved to have good generalization performance and robustness against outliers. However, the disadvantage of a PPSVM is lack of sparseness of solution, i.e., the number of support vectors is still too large. This results in high computational burden and decision time. In this paper, we present two approaches to obtain sparse PPSVMs, which are expected to combine benefits of both PPSVMs and sparse classifiers. The first approach sparsifies the PPSVMs by adding l1 norm penalties on the dual cost function of soft margin PPSVMs. The second one handles a mixed l1-l2 multi-objective optimization by interior-point algorithm. Simulation results show that both approaches have good generalization performance, good robustness against outliers, and high efficiency on decision evaluation.
机译:后验概率支持向量机(PPSVM)被证明具有良好的泛化性能和对异常值的鲁棒性。但是,PPSVM的缺点是缺乏解决方案的稀疏性,即支持向量的数量仍然太大。这导致较高的计算负担和决策时间。在本文中,我们提出了两种获取稀疏PPSVM的方法,这些方法有望结合PPSVM和稀疏分类器的优势。第一种方法是通过在软边际PPSVM的双重成本函数上增加11个标准惩罚来稀疏PPSVM。第二个通过内点算法处理混合的l1-l2多目标优化。仿真结果表明,两种方法均具有良好的泛化性能,良好的鲁棒性和较高的决策评估效率。

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