基于秩降回归的距离度量学习和聚类的统一方案

Wenzhong Guo, Yiqing Shi, Shiping Wang
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引用次数: 7

摘要

距离度量学习的目的是学习一个正半定矩阵,使相似的样本以较小的距离保存,而不相似的样本在预定义的边缘上以较大的值映射。它有助于提高某些学习任务的表现。在本文中,距离度量学习和聚类通过秩降回归集成到一个统一的框架。首先,证明了距离度量学习与秩降回归是一致的,这为结构化正则化矩阵的学习提供了新的视角。其次,分别对正交回归和非负降阶回归问题进行了分析,并提出了相应的收敛算法。最后,在问题的表述中,距离度量学习和聚类同时进行,这可能会引发一些新的见解,用于学习有效的面向聚类的低维嵌入。为了显示所提出方法的优越性能,我们将其与几种最先进的聚类方法进行了比较。在测试数据集上的大量实验证明了该方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Unified Scheme for Distance Metric Learning and Clustering via Rank-Reduced Regression
Distance metric learning aims to learn a positive semidefinite matrix such that similar samples are preserved with small distances while dissimilar ones are mapped with big values above a predefined margin. It can facilitate to improve the performance of certain learning tasks. In this article, distance metric learning and clustering are integrated into an unified framework via rank-reduced regression. First, distance metric learning is proved to be consistent with rank-reduced regression, which provides a new perspective to learn structured regularization matrices. Second, orthogonal and non-negative rank-reduced regression problems are addressed individually for clustering, and the corresponding algorithms with proved convergence are proposed. Finally, both distance metric learning and clustering are addressed simultaneously in the problem formulation, which may trigger some new insights for learning an effective clustering oriented low-dimensional embedding. To show the superior performance of the proposed method, we compare it with several state-of-the-art clustering approaches. And, extensive experiments on the test datasets demonstrate the superiority of the proposed method.
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审稿时长
6.0 months
期刊介绍: The scope of the IEEE Transactions on Systems, Man, and Cybernetics: Systems includes the fields of systems engineering. It includes issue formulation, analysis and modeling, decision making, and issue interpretation for any of the systems engineering lifecycle phases associated with the definition, development, and deployment of large systems. In addition, it includes systems management, systems engineering processes, and a variety of systems engineering methods such as optimization, modeling and simulation.
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