Greedy learning of latent tree models for multidimensional clustering
作者:Teng-Fei Liu, Nevin L. Zhang, Peixian Chen, April Hua Liu, Leonard K. M. Poon, Yi Wang
摘要
Real-world data are often multifaceted and can be meaningfully clustered in more than one way. There is a growing interest in obtaining multiple partitions of data. In previous work we learnt from data a latent tree model (LTM) that contains multiple latent variables (Chen et al. 2012). Each latent variable represents a soft partition of data and hence multiple partitions result in. The LTM approach can, through model selection, automatically determine how many partitions there should be, what attributes define each partition, and how many clusters there should be for each partition. It has been shown to yield rich and meaningful clustering results.
论文关键词:Model-based clustering, Multiple partitions, Latent tree models
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论文官网地址:https://doi.org/10.1007/s10994-013-5393-0