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首页> 外文期刊>ACM transactions on knowledge discovery from data >A Unified Multi-view Clustering Algorithm Using Multi-objective Optimization Coupled with Generative Model
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A Unified Multi-view Clustering Algorithm Using Multi-objective Optimization Coupled with Generative Model

机译:多目标优化结合生成模型的统一多视图聚类算法

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摘要

There is a large body of works on multi-view clustering that exploit multiple representations (or views) of the same input data for better convergence. These multiple views can come from multiple modalities (image, audio, text) or different feature subsets. Obtaining one consensus partitioning after considering different views is usually a non-trivial task. Recently, multi-objective based multi-view clustering methods have suppressed the performance of single objective based multi-view clustering techniques. One key problem is that it is difficult to select a single solution from a set of alternative partitionings generated by multi-objective techniques on the final Pareto optimal front. In this article, we propose a novel multi-objective based multi-view clustering framework that overcomes the problem of selecting a single solution in multi-objective based techniques. In particular, our proposed framework has three major components as follows: (i) multi-view based multi-objective algorithm, Multiview-AMOSA, for initial clustering of data points; (ii) a generative model for generating a combined solution having probabilistic labels; and (iii) K-means algorithm for obtaining the final labels. As the first component, we have adopted a recently developed multi-view based multi-objective clustering algorithm to generate different possible consensus partitionings of a given dataset taking into account different views. A generative model is coupled with the first component to generate a single consensus partitioning after considering multiple solutions. It exploits the latent subsets of the non-dominated solutions obtained from the multi-objective clustering algorithm and combines them to produce a single probabilistic labeled solution. Finally, a simple clustering algorithm, namely K-means, is applied on the generated probabilistic labels to obtain the final cluster labels. Experimental validation of our proposed framework is carried out over several benchmark datasets belonging to three different domains; UCI datasets, multi-view datasets, search result clustering datasets, and patient stratification datasets. Experimental results show that our proposed framework achieves an improvement of around 2%-4% over different evaluation metrics in all the four domains in comparison to state-of-the art methods.
机译:关于多视图群集的大量工作都利用相同输入数据的多个表示(或视图)来实现更好的收敛性。这些多个视图可以来自多种模式(图像,音频,文本)或不同的功能子集。在考虑了不同的观点之后获得一个共识划分通常是一项艰巨的任务。近来,基于多目标的多视图聚类方法抑制了基于单目标的多视图聚类技术的性能。一个关键问题是,很难从在最后的帕累托最优前沿上的多目标技术生成的一组替代分区中选择单个解决方案。在本文中,我们提出了一种新颖的基于多目标的多视图聚类框架,该框架克服了在基于多目标的技术中选择单个解决方案的问题。特别是,我们提出的框架具有以下三个主要组成部分:(i)基于多视图的多目标算法Multiview-AMOSA,用于数据点的初始聚类; (ii)用于生成具有概率标记的组合解决方案的生成模型; (iii)用于获得最终标签的K-均值算法。作为第一个组件,我们采用了最近开发的基于多视图的多目标聚类算法,以考虑到不同的视图来生成给定数据集的不同可能的共识分区。在考虑多个解决方案后,将生成模型与第一个组件耦合以生成单个共识分区。它利用了从多目标聚类算法获得的非支配解的潜在子集,并将它们组合以生成单个概率标记解。最后,将简单的聚类算法(即K-means)应用于生成的概率标签,以获得最终的聚类标签。我们提出的框架的实验验证是在属于三个不同领域的几个基准数据集上进行的; UCI数据集,多视图数据集,搜索结果聚类数据集和患者分层数据集。实验结果表明,与最新方法相比,我们提出的框架在所有四个领域的不同评估指标上均实现了约2%-4%的改进。

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