Learning nonsingular phylogenies and hidden Markov models

Citation
Mossel, Elchanan et Roch, Sébastien, Learning nonsingular phylogenies and hidden Markov models, Annals of applied probability , 16(2), 2008, pp. 583-614
ISSN journal
10505164
Volume
16
Issue
2
Year of publication
2008
Pages
583 - 614
Database
ACNP
SICI code
Abstract
In this paper we study the problem of learning phylogenies and hidden Markov models. We call a Markov model nonsingular if all transition matrices have determinants bounded away from 0 (and 1). We highlight the role of the nonsingularity condition for the learning problem. Learning hidden Markov models without the nonsingularity condition is at least as hard as learning parity with noise, a well-known learning problem conjectured to be computationally hard. On the other hand, we give a polynomial-time algorithm for learning nonsingular phylogenies and hidden Markov models.