Model-Based Co-clustering for Continuous Data

M. Nadif, G. Govaert
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引用次数: 27

Abstract

The co-clustering consists in reorganizing a data matrix into homogeneous blocks by considering simultaneously the sets of rows and columns. Setting this aim in model-based clustering, adapted block latent models were proposed for binary data and co-occurrence matrix. Regarding continuous data, the latent block model is not appropriated in many cases. As non-negative matrix factorization, it treats symmetrically the two sets, and the estimation of associated parameters requires a variational approximation. In this paper we focus on continuous data matrix without restriction to non negative matrix. We propose a parsimonious mixture model allowing to overcome the limits of the latent block model.
基于模型的连续数据共聚类
共聚类包括通过同时考虑行和列的集合将数据矩阵重新组织成同质块。在基于模型的聚类中,针对二值数据和共现矩阵提出了自适应块隐模型。对于连续数据,潜伏块模型在很多情况下并不适用。作为非负矩阵分解,它对两个集合进行对称处理,相关参数的估计需要变分逼近。本文主要研究不受非负矩阵限制的连续数据矩阵。我们提出了一个简化的混合模型,以克服潜在块模型的局限性。
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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