Local and Global Optimization Techniques in Graph-Based Clustering

Daiki Ikami, T. Yamasaki, K. Aizawa
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引用次数: 5

Abstract

The goal of graph-based clustering is to divide a dataset into disjoint subsets with members similar to each other from an affinity (similarity) matrix between data. The most popular method of solving graph-based clustering is spectral clustering. However, spectral clustering has drawbacks. Spectral clustering can only be applied to macroaverage-based cost functions, which tend to generate undesirable small clusters. This study first introduces a novel cost function based on micro-average. We propose a local optimization method, which is widely applicable to graph-based clustering cost functions. We also propose an initial-guess-free algorithm to avoid its initialization dependency. Moreover, we present two global optimization techniques. The experimental results exhibit significant clustering performances from our proposed methods, including 100% clustering accuracy in the COIL-20 dataset.
基于图的聚类中的局部和全局优化技术
基于图的聚类的目标是根据数据之间的亲和力(相似度)矩阵将数据集划分为不相交的子集,这些子集的成员彼此相似。解决基于图的聚类最常用的方法是谱聚类。然而,光谱聚类也有缺点。谱聚类只能应用于基于宏平均的代价函数,这往往会产生不希望的小聚类。本研究首先引入了一种基于微平均的成本函数。我们提出了一种局部优化方法,该方法广泛适用于基于图的聚类代价函数。我们还提出了一种无需初始猜测的算法,以避免其初始化依赖。此外,我们还提出了两种全局优化技术。实验结果表明,本文提出的方法具有显著的聚类性能,在COIL-20数据集上的聚类准确率达到100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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