特征选择的直接零范数优化

Kaizhu Huang, Irwin King, Michael R. Lyu
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引用次数: 23

摘要

零范数定义为向量中非零元素的个数,是特征选择的理想数量。然而,零范数的最小化通常被认为是一个组合困难的优化问题。不同于以往的方法通常是对零范数的代理进行优化,本文提出了一种直接优化方法来实现零范数的特征选择。该方法基于期望最大化(EM),可归结为求解一系列二次规划问题,因此可以在多项式时间内进行实际优化。我们证明了所提出的优化技术具有很好的贝叶斯解释,并且在给定一个好的起点的情况下渐近收敛于真零范数。根据我们提出的零范数方案,我们甚至证明了基于任意范数的支持向量机可以在多项式时间内实现。一系列实验表明,我们提出的基于EM的零范数的特征选择方法在生物微阵列数据和UCI数据上的准确性和学习效率都优于其他最先进的特征选择方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Direct Zero-Norm Optimization for Feature Selection
Zero-norm, defined as the number of non-zero elements in a vector, is an ideal quantity for feature selection. However, minimization of zero-norm is generally regarded as a combinatorially difficult optimization problem. In contrast to previous methods that usually optimize a surrogate of zero-norm, we propose a direct optimization method to achieve zero-norm for feature selection in this paper. Based on Expectation Maximization (EM), this method boils down to solving a sequence of Quadratic Programming problems and hence can be practically optimized in polynomial time. We show that the proposed optimization technique has a nice Bayesian interpretation and converges to the true zero norm asymptotically, provided that a good starting point is given. Following the scheme of our proposed zero-norm, we even show that an arbitrary-norm based Support Vector Machine can be achieved in polynomial time. A series of experiments demonstrate that our proposed EM based zero-norm outperforms other state-of-the-art methods for feature selection on biological microarray data and UCI data, in terms of both the accuracy and the learning efficiency.
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