A Feasible Direction Method for Optimization Problem with Orthogonal Constraint in Feature Selection

Jianyu Miao, Yong Shi, Lingfeng Niu
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Abstract

Feature selection, as a fundamental component of building robust models, plays an important role in many machine learning and data mining tasks. Since acquiring labeled data is particularly expensive in both time and effort, unsupervised feature selection on unlabeled data has recently gained considerable attention. Without label information, unsupervised feature selection needs alternative criteria to define feature relevance. We propose a novel unsupervised feature selection model, which embeds feature selection into nonnegative spectral clustering. A tailored optimization algorithm based on Alternating Direction Method of Multipliers (ADMM) is designed to solve the proposed model. Many previous unsupervised feature selection methods used singular value decompose (SVD) to handle the subproblem with orthogonal constraint. Generally, the scale of the matrix in feature selection is significantly big, the computation of SVD will be very slow or even infeasible. To address this issue, we propose to use a feasible direction method to efficiently solve the subproblem with orthogonal constraint. The experimental study shows that we can obtain better performance compared with the state of the art methods.
特征选择中正交约束优化问题的可行方向方法
特征选择作为构建鲁棒模型的基本组成部分,在许多机器学习和数据挖掘任务中起着重要作用。由于获取标记数据在时间和精力上都特别昂贵,对未标记数据的无监督特征选择最近得到了相当大的关注。没有标签信息,无监督特征选择需要替代标准来定义特征相关性。提出了一种新的无监督特征选择模型,将特征选择嵌入到非负谱聚类中。设计了一种基于乘法器交替方向法(ADMM)的定制优化算法来求解该模型。以往的无监督特征选择方法大多采用奇异值分解(SVD)来处理正交约束子问题。通常,在特征选择中,矩阵的尺度非常大,奇异值分解的计算速度很慢,甚至是不可行的。为了解决这一问题,我们提出了一种可行方向法来有效地求解正交约束子问题。实验研究表明,与目前的方法相比,我们可以获得更好的性能。
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