Since the early days of digital communication, Hidden Markov Models (HMMs) have now been routinely used in speech recognition, processing of natural languages, images, and in bioinformatics. An HMM assumes observations to be conditionally independent given an "explanotary" Markov process , which itself is not observed; moreover, the conditional distribution of depends solely on . Central to the theory and applications of HMM is the Viterbi algorithm to find {\em a maximum a posteriori} estimate of given the observed data . Maximum {\em a posteriori} paths are also called Viterbi paths or alignments. Recently, attempts have been made to study the behavior of Viterbi alignments of HMMs with two hidden states when tends to infinity. It has indeed been shown that in some special cases a well-defined limiting Viterbi alignment exists. While innovative, these attempts have relied on rather strong assumptions. This work proves the existence of infinite Viterbi alignments for virtually any HMM with two hidden states.
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