最小熵编码的核方法

S. Melacci, M. Gori
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引用次数: 1

摘要

根据信息论学习(ITL)的基本原理,本文提出了一种新的数据聚类方法——最小熵编码器(MEEs)。我们考虑一组函数,将每个输入点投影到最小熵配置(代码)上。编码函数由内核机建模,生成的代码收集集群隶属概率。包括两个正则化器,分别用于平衡输出特征的分布和支持光滑解,从而导致可以通过共轭梯度或凹凸过程有效解决的无约束优化问题。研究了最大边际聚类算法与最大边际聚类算法的关系,结果表明该算法克服了一些关键问题,如缺乏多类扩展和需要面对大量约束的问题。对所提出方法的几个基准进行的大规模评估显示,在准确性和计算复杂性方面,该方法都优于最先进的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel Methods for Minimum Entropy Encoding
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Minimum Entropy Encoders (MEEs), a novel approach to data clustering. We consider a set of functions that project each input point onto a minimum entropy configuration (code). The encoding functions are modeled by kernel machines and the resulting code collects the cluster membership probabilities. Two regularizers are included to balance the distribution of the output features and favor smooth solutions, respectively, thus leading to an unconstrained optimization problem that can be efficiently solved by conjugate gradient or concave-convex procedures. The relationships with Maximum Margin Clustering algorithms are investigated, which show that MEEs overcomes some of the critical issues, such as the lack of a multi-class extension and the need to face problems with a large number of constraints. A massive evaluation on several benchmarks of the proposed approach shows improvements over state-of-the-art techniques, both in terms of accuracy and computational complexity.
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