A generalized risk approach to path inference based on hidden Markov models

Lember, Jüri and Koloydenko, Alexey

(2012)

Lember, Jüri and Koloydenko, Alexey (2012) A generalized risk approach to path inference based on hidden Markov models. The Journal of Machine Learning Research

Our Full Text Deposits

Full text access: Open

Full text file - 1.15 MB

Abstract

Motivated by the unceasing interest in hidden Markov models (HMMs), this paper re-examines hidden path inference in these models, using primarily a risk-based framework. While the most common maximum a posteriori (MAP), or Viterbi, path estimator and the minimum error, or Posterior Decoder (PD), have long been around, other path estimators, or decoders, have been either only hinted at or applied more recently and in dedicated applications generally unfamiliar to the statistical learning community. Over a decade ago, however, a family of algorithmically defined decoders aiming to hybridize the two standard ones was proposed (Brushe et al., 1998). The present paper gives a careful analysis of this hybridization approach, identifies several problems and issues with it and other previously proposed approaches, and proposes practical resolutions of those. Furthermore, simple modifications of the classical criteria for hidden path recognition are shown to lead to a new class of decoders. Dynamic programming algorithms to compute these decoders in the usual forward-backward manner are presented. A particularly interesting subclass of such estimators can be also viewed as hybrids of the MAP and PD estimators. Similar to previously proposed MAP-PD hybrids, the new class is parameterized by a small number of tunable parameters. Unlike their algorithmic predecessors, the new risk-based decoders are more clearly interpretable, and, most importantly, work "out of the box" in practice, which is demonstrated on some real bioinformatics tasks and data. Some further generalizations and applications are discussed in conclusion.

Information about this Version

This is a Draft version
This version's date is: 2012
This item is not peer reviewed

Link to this Version

https://repository.royalholloway.ac.uk/items/85cff39a-0346-905f-8bdf-b5a626e24755/1/

Item TypeJournal Article
TitleA generalized risk approach to path inference based on hidden Markov models
AuthorsLember, Jüri
Koloydenko, Alexey
Uncontrolled KeywordsAdmissible path, HMM, hybrid, interpolation, MAP sequence, minimum error, optimal accuracy, symbol-by-symbol, posterior decoding, Viterbi algorithm
DepartmentsFaculty of Science\Mathematics

Identifiers

Deposited by Research Information System (atira) on 24-Jul-2012 in Royal Holloway Research Online.Last modified on 24-Jul-2012


Details