The analyticity of the entropy and relative entropy rates of continuous-state
hidden Markov models is studied here. Using the analytic continuation principle
and the stability properties of the optimal filter, the analyticity of these
rates is shown for analytically parameterized models. The obtained results hold
under relatively mild conditions and cover several classes of hidden Markov
models met in practice. These results are relevant for several (theoretically
and practically) important problems arising in statistical inference, system
identification and information theory