Title of article
Self-updating clustering algorithm for estimating the parameters in mixtures of von Mises distributions
Author/Authors
Wen-Liang Hung، نويسنده , , Shou-Jen Chang-Chien&Miin-Shen Yang، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
16
From page
2259
To page
2274
Abstract
The EM algorithm is the standard method for estimating the parameters in finite mixture models.Yang and
Pan [25] proposed a generalized classification maximum likelihood procedure, called the fuzzy c-directions
(FCD) clustering algorithm, for estimating the parameters in mixtures of vonMises distributions. Two main
drawbacks of the EM algorithm are its slow convergence and the dependence of the solution on the initial
value used. The choice of initial values is of great importance in the algorithm-based literature as it can
heavily influence the speed of convergence of the algorithm and its ability to locate the global maximum. On
the other hand, the algorithmic frameworks of EM and FCD are closely related. Therefore, the drawbacks
of FCD are the same as those of the EM algorithm. To resolve these problems, this paper proposes another
clustering algorithm, which can self-organize local optimal cluster numbers without using cluster validity
functions. These numerical results clearly indicate that the proposed algorithm is superior in performance
of EM and FCD algorithms. Finally, we apply the proposed algorithm to two real data sets.
Keywords
circular data , Mixtures of von Mises distributions , Robust , self-updating process
Journal title
JOURNAL OF APPLIED STATISTICS
Serial Year
2012
Journal title
JOURNAL OF APPLIED STATISTICS
Record number
712860
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