Optimal Solutions for Sparse Principal Component Analysis 论文

2008Journal of Machine Learning Research引用 259
Sparse and Compressive Sensing TechniquesFace and Expression RecognitionBlind Source Separation Techniques

详细信息

发表期刊/会议
Journal of Machine Learning Research
发表日期
2008-06-01
发表年份
2008

关键词

Sparse and Compressive Sensing TechniquesFace and Expression RecognitionBlind Source Separation Techniques

摘要

Given a sample covariance matrix, we examine the problem of maximizing the variance explained by a linear combination of the input variables while constraining the number of nonzero coefficients in this combination. This is known as sparse principal component analysis and has a wide array of applications in machine learning and engineering. We formulate a new semidefinite relaxation to this problem and derive a greedy algorithm that computes a full set of good solutions for all target numbers of non zero coefficients, with total complexity O(n3), where n is the number of variables. We then use the same relaxation to derive sufficient conditions for global optimality of a solution, which can be tested in O(n3), per pattern. We discuss applications in subset selection and sparse recovery and show on artificial examples and biological data that our algorithm does provide globally optimal solutions in many cases.