带有邻居关系的半监督聚类的进化距离度量学习方法

Ken-ichi Fukui, S. Ono, Taishi Megano, M. Numao
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引用次数: 13

摘要

本文提出了一种基于具有邻居关系的聚类指标的距离度量学习方法,该方法可以同时评估聚类间和聚类内。该方法利用自适应差分进化(jDE)算法对基于马氏距离的距离变换矩阵进行优化。我们的方法直接改进了各种聚类指标,并且与传统的度量学习方法相比,原则上需要更少的辅助信息。实验验证了jDE的搜索效率和泛化性能。
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Evolutionary Distance Metric Learning Approach to Semi-supervised Clustering with Neighbor Relations
This study proposes a distance metric learning method based on a clustering index with neighbor relation that simultaneously evaluates inter-and intra-clusters. Our proposed method optimizes a distance transform matrix based on the Mahalanobis distance by utilizing a self-adaptive differential evolution (jDE) algorithm. Our approach directly improves various clustering indices and in principle requires less auxiliary information compared to conventional metric learning methods. We experimentally validated the search efficiency of jDE and the generalization performance.
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