| Literature DB >> 26340888 |
Roel Verbelen1, Katrien Antonio2,3, Gerda Claeskens2.
Abstract
Multivariate mixtures of Erlang distributions form a versatile, yet analytically tractable, class of distributions making them suitable for multivariate density estimation. We present a flexible and effective fitting procedure for multivariate mixtures of Erlangs, which iteratively uses the EM algorithm, by introducing a computationally efficient initialization and adjustment strategy for the shape parameter vectors. We furthermore extend the EM algorithm for multivariate mixtures of Erlangs to be able to deal with randomly censored and fixed truncated data. The effectiveness of the proposed algorithm is demonstrated on simulated as well as real data sets.Keywords: Censored data; Density estimation; Expectation–maximization algorithm; Maximum likelihood; Multivariate mixtures of Erlangs with a common scale parameter
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Year: 2015 PMID: 26340888 DOI: 10.1007/s10985-015-9343-y
Source DB: PubMed Journal: Lifetime Data Anal ISSN: 1380-7870 Impact factor: 1.588