Maximum likelihood estimation for multivariate observations of Markov sources 论文
1982IEEE Transactions on Information Theory引用 383
Algorithms and Data CompressionBlind Source Separation TechniquesBayesian Methods and Mixture Models
摘要
Parameter estimation for multivariate functions of Markov chains, a class of versatile statistical models for vector random processes, is discussed. The model regards an ordered sequence of vectors as noisy multivariate observations of a Markov chain. Mixture distributions are a special case. The foundations of the theory presented here were established by Baum, Petrie, Soules, and Weiss. A powerful representation theorem by Fan is employed to generalize the analysis of Baum, {\em et al.} to a larger class of distributions.