Title
Robust Bayesian Cluster Enumeration.
Abstract
A major challenge in cluster analysis is that the number of data clusters is mostly unknown and it must be estimated prior to clustering the observed data. In real-world applications, the observed data is often subject to heavy tailed noise and outliers which obscure the true underlying structure of the data. Consequently, estimating the number of clusters becomes challenging. To this end, we derive a robust cluster enumeration criterion by formulating the problem of estimating the number of clusters as maximization of the posterior probability of multivariate $t_nu$ candidate models. We utilize Bayesu0027 theorem and asymptotic approximations to come up with a robust criterion that possesses a closed-form expression. Further, we refine the derivation and provide a robust cluster enumeration criterion for the finite sample regime. The robust criteria require an estimate of cluster parameters for each candidate model as an input. Hence, we propose a two-step cluster enumeration algorithm that uses the expectation maximization algorithm to partition the data and estimate cluster parameters prior to the calculation of one of the robust criteria. The performance of the proposed algorithm is tested and compared to existing cluster enumeration methods using numerical and real data experiments.
Year
Venue
DocType
2018
arXiv: Machine Learning
Journal
Volume
Citations 
PageRank 
abs/1811.12337
0
0.34
References 
Authors
0
3
Name
Order
Citations
PageRank
freweyni k teklehaymanot183.51
Michael Muma214419.51
Abdelhak M. Zoubir31036148.03