约束群明智k -均值算法的研究

Hu Yang, Xianhou Chang
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引用次数: 0

摘要

本文提出了一种基于约束群的k-means算法,用于聚类过程中特征组的选择。该算法的思想是不仅通过套索惩罚约束单个特征的权重,而且通过分组套索惩罚约束分组特征的权重。在这两种惩罚的作用下,该算法不仅在聚类方面表现更好,而且在获得正确特征的能力上与其他方法相当,而计算时间比稀疏k-means算法少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Studies on the Constrained Group-Wise K-Means Algorithm
In this paper, the constrained group-wise k-means algorithm is proposed to select groups of features during clustering. The idea of the algorithm is it not only constrains the weight of individual features via the lasso penalty, but also restrains group-wise weight of features by the group lasso penalty. Under the effect of these two penalties, this algorithm not only performs better in clustering, but is also comparable to other approaches in its ability to obtain the correct features with costing less computational time than the sparse k-means algorithm.
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