We prove results on the decidability and complexity of computing the total variation distance (equivalently, the L_1-distance) of hidden Markov models (equivalently, labelled Markov chains). This distance measures the difference between the distributions on words that two hidden Markov models induce. The main results are: (1) it is undecidable whether the distance is greater than a given threshold; (2) approximation is #P-hard and in PSPACE
Abstract. We study the strong and strutter trace distances on Markov chains (MCs). Our interest in t...
A transformation mapping a labelled Markov chain to a simple stochastic game is presented. In the r...
We study the strong and strutter trace distances on Markov chains (MCs). Our interest in these metri...
We prove results on the decidability and complexity of computing the total variation distance (equiv...
Labelled Markov chains (LMCs) are widely used in probabilistic verification, speech recognition, com...
Semi-Markov chains (SMCs) are continuous-time probabilistic transition systems where the residence t...
AbstractThe basic theory of hidden Markov models was developed and applied to problems in speech rec...
Abstract. Semi-Markov chains (SMCs) are continuous-time probabilis-tic transition systems where the ...
Semi-Markov chains (SMCs) are continuous-time probabilistic transition systems where the residence t...
We introduce a general class of distances (metrics) between Markov chains, which are based on linear...
We introduce a general class of distances (metrics) between Markov chains, which are based on linear...
We introduce a general class of distances (metrics) between Markov chains, which are based on linear...
We consider the Sequential Probability Ratio Test applied to Hidden Markov Models. Given two Hidden ...
An important task in AI is one of classifying an observation as belonging to one class among several...
We propose polynomial-time algorithms to minimise labelled Markov chains whose transition probabilit...
Abstract. We study the strong and strutter trace distances on Markov chains (MCs). Our interest in t...
A transformation mapping a labelled Markov chain to a simple stochastic game is presented. In the r...
We study the strong and strutter trace distances on Markov chains (MCs). Our interest in these metri...
We prove results on the decidability and complexity of computing the total variation distance (equiv...
Labelled Markov chains (LMCs) are widely used in probabilistic verification, speech recognition, com...
Semi-Markov chains (SMCs) are continuous-time probabilistic transition systems where the residence t...
AbstractThe basic theory of hidden Markov models was developed and applied to problems in speech rec...
Abstract. Semi-Markov chains (SMCs) are continuous-time probabilis-tic transition systems where the ...
Semi-Markov chains (SMCs) are continuous-time probabilistic transition systems where the residence t...
We introduce a general class of distances (metrics) between Markov chains, which are based on linear...
We introduce a general class of distances (metrics) between Markov chains, which are based on linear...
We introduce a general class of distances (metrics) between Markov chains, which are based on linear...
We consider the Sequential Probability Ratio Test applied to Hidden Markov Models. Given two Hidden ...
An important task in AI is one of classifying an observation as belonging to one class among several...
We propose polynomial-time algorithms to minimise labelled Markov chains whose transition probabilit...
Abstract. We study the strong and strutter trace distances on Markov chains (MCs). Our interest in t...
A transformation mapping a labelled Markov chain to a simple stochastic game is presented. In the r...
We study the strong and strutter trace distances on Markov chains (MCs). Our interest in these metri...