Herein, the Hidden Markov Model is expanded to allow for Markov chain observations. In particular, the observations are assumed to be a Markov chain whose one step transition probabilities depend upon the hidden Markov chain. An Expectation-Maximization analog to the Baum-Welch algorithm is developed for this more general model to estimate the transition probabilities for both the hidden state and for the observations as well as to estimate the probabilities for the initial joint hidden-state-observation distribution. A believe state or filter recursion to track the hidden state then arises from the calculations of this Expectation-Maximization algorithm. A dynamic programming analog to the Viterbi algorithm is also developed to estimate the most likely sequence of hidden states given the sequence of observations.
翻译:在本文中,隐马尔可夫模型得到扩展,允许Markov链观测。特别地,假设观测是一个Markov链,其一步转移概率取决于隐藏的Markov链。针对这个更普遍的模型开发了一种期望最大化模拟Baum-Welch算法,用于估计隐藏状态和观测的转移概率,以及估计初始的联合隐藏-观测概率分布。基于这个期望最大化算法的计算,产生了一种信念状态或滤波递归来跟踪隐藏状态。还开发了一种动态规划类比Viterbi算法,以估计给定观测序列的最可能的隐藏状态序列。