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An empirical analysis of training protocols for probabilistic gene finders
Authors:William?H?Majoros  author-information"  >  author-information__contact u-icon-before"  >  mailto:bmajoros@tigr.org"   title="  bmajoros@tigr.org"   itemprop="  email"   data-track="  click"   data-track-action="  Email author"   data-track-label="  "  >Email author,Steven?L?Salzberg
Affiliation:(1) The Institute for Genomic Research, 9712 Medical Center Drive, Rockville, MD 20850, USA
Abstract:

Background  

Generalized hidden Markov models (GHMMs) appear to be approaching acceptance as a de facto standard for state-of-the-art ab initio gene finding, as evidenced by the recent proliferation of GHMM implementations. While prevailing methods for modeling and parsing genes using GHMMs have been described in the literature, little attention has been paid as of yet to their proper training. The few hints available in the literature together with anecdotal observations suggest that most practitioners perform maximum likelihood parameter estimation only at the local submodel level, and then attend to the optimization of global parameter structure using some form of ad hoc manual tuning of individual parameters.
Keywords:
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