局部约束支持向量聚类

Dragomir Yankov, Eamonn J. Keogh, K. Kan
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引用次数: 16

摘要

支持向量聚类将数据转换为高维特征空间,并在高维特征空间中计算决策函数。在原始空间中,该函数勾勒出高密度区域的边界,自然地将数据分成单独的簇。然而,这种方法虽然理论上是合理的,但也有一些缺点,使它对实践者不那么有吸引力。也就是说,它在存在异常值时是不稳定的,并且很难控制它识别的簇的数量。在有噪声的环境下,不正确的参数化算法可能会掩盖数据中客观存在的一些聚类,也可能会识别出大量的小而非直观的聚类。在这里,我们探索数据的性质在小区域建立一个混合的因素分析。通过为每个样本分配适当的权重,获得的信息用于正则化概述的聚类边界的复杂性。该方法被证明不太容易受到噪声的影响,并且比单独的支持向量聚类能更好地描述可解释的聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Locally Constrained Support Vector Clustering
Support vector clustering transforms the data into a high dimensional feature space, where a decision function is computed. In the original space, the function outlines the boundaries of higher density regions, naturally splitting the data into individual clusters. The method, however, though theoretically sound, has certain drawbacks which make it not so appealing to the practitioner. Namely, it is unstable in the presence of outliers and it is hard to control the number of clusters that it identifies. Parametrizing the algorithm incorrectly in noisy settings, can either disguise some objectively present clusters in the data, or can identify a large number of small and nonintuitive clusters. Here, we explore the properties of the data in small regions building a mixture of factor analyzers. The obtained information is used to regularize the complexity of the outlined cluster boundaries, by assigning suitable weighting to each example. The approach is demonstrated to be less susceptible to noise and to outline better interpretable clusters than support vector clustering alone.
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