Title
UC-LTM: Unidimensional clustering using latent tree models for discrete data.
Abstract
This paper is concerned with model-based clustering of discrete data. Latent class models (LCMs) are usually used for this task. An LCM consists of a latent variable and a number of attributes. It makes the overly restrictive assumption that the attributes are conditionally independent given the latent variable. We propose a novel method to relax this assumption. The key idea is to partition the attributes into groups such that correlations among the attributes in each group can be properly modeled by using a single latent variable. The latent variables for the attribute groups are then used to build a number of models, and one of them is chosen to produce the clustering results. The new method produces unidimensional clustering using latent tree models and is named UC-LTM. Extensive empirical studies were conducted to compare UC-LTM with several model-based and distance-based clustering methods. UC-LTM outperforms the alternative methods in most cases, and the differences are often large. Further, analysis on real-world social capital data further shows improved results given by UC-LTM over results given by LCMs in a previous study.
Year
DOI
Venue
2018
10.1016/j.ijar.2017.10.020
International Journal of Approximate Reasoning
Keywords
Field
DocType
Unidimensional clustering,Latent tree models,Latent class models,Probabilistic graphical models,Unsupervised learning
Conditional independence,Latent variable model,Latent class model,Latent variable,Probabilistic latent semantic analysis,Artificial intelligence,Local independence,Partition (number theory),Cluster analysis,Machine learning,Mathematics
Journal
Volume
Issue
ISSN
92
1
0888-613X
Citations 
PageRank 
References 
0
0.34
19
Authors
3
Name
Order
Citations
PageRank
Leonard K. M. Poon19410.96
April H. Liu291.60
Nevin .L Zhang389597.21