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- Composite Likelihood EM Algorithm with Applications to Multivariate Hidden Markov Model
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- Abstract:
- The method of composite likelihood is useful to deal with estimation and inference in parametric models
with high-dimensional data, where the full likelihood approach renders to intractable computational
complexity. We develop an extension of the EM algorithm in the framework of composite likelihood estimation
in the presence of missing data or latent variables. We establish three key theoretical properties
of the composite likelihood EM (CLEM) algorithm, including the ascent property, the algorithmic convergence
and the convergence rate. The proposed method is applied to estimate the transition probabilities in
multivariate hidden Markov model. Simulation studies are presented to demonstrate the empirical performance
of the method. A time-course microarray data is analyzed using the proposed CLEM method
to dissect the underlying gene regulatory network.
- Subject Area:
- General Biostatistics
- Suggested Citation:
- Xin Gao and Peter Xuekun Song,
"Composite Likelihood EM Algorithm with Applications to Multivariate Hidden Markov Model "
(September 2009).
COBRA Preprint Series.
Article 61.
http://biostats.bepress.com/cobra/ps/art61