Treffer: Learning partially observable Markov models from first passage times

Title:
Learning partially observable Markov models from first passage times
Publisher Information:
Springer-verlag 2007
Document Type:
E-Ressource Electronic Resource
Availability:
Open access content. Open access content
info:eu-repo/semantics/restrictedAccess
Note:
English
Other Numbers:
UCDLC oai:dial.uclouvain.be:boreal:67839
boreal:67839
1130544584
Contributing Source:
UNIVERSITE CATHOLIQUE DE LOUVAIN
From OAIster®, provided by the OCLC Cooperative.
Accession Number:
edsoai.on1130544584
Database:
OAIster

Weitere Informationen

We propose a novel approach to learn the structure of partially observable Markov models (POMMs) and to estimate jointly their parameters. POMMs are graphical models equivalent to hidden Markov models (HMMs). The model structure is built to support the first passage times (FPT) dynamics observed in the training sample. We argue that the FPT in POMMs are closely related to the model structure. Starting from a standard Markov chain, states are iteratively added to the model. A novel algorithm POMMPHit is proposed to estimate the POMM transition probabilities to fit the sample FPT dynamics. The transitions with the lowest expected passage times are trimmed off from the model. Practical evaluations on artificially generated data and on DNA sequence modeling show the benefits over Bayesian model induction or EM estimation of ergodic models with transition trimming.
Anglais