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arxiv: 1804.06170 · v1 · pith:WLSIJE5Wnew · submitted 2018-04-17 · 💻 cs.FL · cs.LO

On Computing the Total Variation Distance of Hidden Markov Models

classification 💻 cs.FL cs.LO
keywords distancemarkovhiddenmodelscomputingequivalentlyresultstotal
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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.

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