Inducing Probabilistic Grammars by Bayesian Model Merging
Abstract
We describe a framework for inducing probabilistic grammars from corpora of positive samples. First, samples are {\em incorporated} by adding ad-hoc rules to a working grammar; subsequently, elements of the model (such as states or nonterminals) are {\em merged} to achieve generalization and a more compact representation. The choice of what to merge and when to stop is governed by the Bayesian posterior probability of the grammar given the data, which formalizes a trade-off between a close fit to the data and a default preference for simpler models (`Occam's Razor'). The general scheme is illustrated using three types of probabilistic grammars: Hidden Markov models, class-based -grams, and stochastic context-free grammars.
Cite
@article{arxiv.cmp-lg/9409010,
title = {Inducing Probabilistic Grammars by Bayesian Model Merging},
author = {Andreas Stolcke and Stephen M. Omohundro},
journal= {arXiv preprint arXiv:cmp-lg/9409010},
year = {2022}
}
Comments
To appear in Grammatical Inference and Applications, Second International Colloquium on Grammatical Inference; Springer Verlag, 1994. 13 pages