Title :
Markov random fields on graphs for natural languages
Author :
O´Sullivan, Joseph A. ; Mark, Kevin ; Miller, Michael I.
Author_Institution :
Dept. of Electr. Eng., Washington Univ., St. Louis, MO, USA
Abstract :
The use of model-based methods for data compression for English dates back at least to Shannon´s Markov chain (n-gram) models, where the probability of the next word given all previous words equals the probability of the next word given the previous n-1 words. A second approach seeks to model the hierarchical nature of language via tree graph structures arising from a context-free language (CFL). Neither the n-gram nor the CFL models approach the data compression predicted by the entropy of English as estimated by Shannon and Cover and King. This paper presents two models that incorporate the benefits of both the n-gram model and the tree-based models. In either case the neighborhood structure on the syntactic variables is determined by the tree while the neighborhood structure of the words is determined by the n-gram and the parent syntactic variable (preterminal) in the tree, Having both types of neighbors for the words should yield decreased entropy of the model and hence fewer bits per word in data compression. To motivate estimation of model parameters, some results in estimating parameters for random branching processes is reviewed
Keywords :
Markov processes; context-free languages; data compression; entropy; natural languages; probability; random processes; speech processing; trees (mathematics); English; Markov random fields; Shannon´s Markov chain models; context-free language; data compression; entropy; graphs; model-based methods; n-gram model; natural languages; neighborhood structure; parameter estimation; parent syntactic variable; preterminal; probability; random branching processes; syntactic variables; tree graph structures; tree-based models; words; Context modeling; Data compression; Eigenvalues and eigenfunctions; Entropy; Markov random fields; Natural languages; Parameter estimation; Predictive models; Stochastic processes; Tree graphs;
Conference_Titel :
Information Theory and Statistics, 1994. Proceedings., 1994 IEEE-IMS Workshop on
Conference_Location :
Alexandria, VA
Print_ISBN :
0-7803-2761-6
DOI :
10.1109/WITS.1994.513880