Title :
Analyticity of Entropy Rate of Hidden Markov Chains
Author :
Han, Guangyue ; Marcus, Brian
Author_Institution :
Dept. of Math., British Columbia Univ., Vancouver, BC
Abstract :
We prove that under mild positivity assumptions the entropy rate of a hidden Markov chain varies analytically as a function of the underlying Markov chain parameters. A general principle to determine the domain of analyticity is stated. An example is given to estimate the radius of convergence for the entropy rate. We then show that the positivity assumptions can be relaxed, and examples are given for the relaxed conditions. We study a special class of hidden Markov chains in more detail: binary hidden Markov chains with an unambiguous symbol, and we give necessary and sufficient conditions for analyticity of the entropy rate for this case. Finally, we show that under the positivity assumptions, the hidden Markov chain itself varies analytically, in a strong sense, as a function of the underlying Markov chain parameters
Keywords :
convergence; entropy; hidden Markov models; binary hidden Markov chain; convergence radius; entropy rate analyticity; Australia; Convergence; Entropy; Hidden Markov models; Information theory; Mathematics; Source coding; Stochastic processes; Sufficient conditions; Analyticity; entropy; entropy rate; hidden Markov chain; hidden Markov process;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2006.885481