
arXiv: cs/9809026
handle: 11577/174931
Language models for speech recognition typically use a probability model of the form Pr(a_n | a_1, a_2, ..., a_{n-1}). Stochastic grammars, on the other hand, are typically used to assign structure to utterances. A language model of the above form is constructed from such grammars by computing the prefix probability Sum_{w in Sigma*} Pr(a_1 ... a_n w), where w represents all possible terminations of the prefix a_1 ... a_n. The main result in this paper is an algorithm to compute such prefix probabilities given a stochastic Tree Adjoining Grammar (TAG). The algorithm achieves the required computation in O(n^6) time. The probability of subderivations that do not derive any words in the prefix, but contribute structurally to its derivation, are precomputed to achieve termination. This algorithm enables existing corpus-based estimation techniques for stochastic TAGs to be used for language modelling.
7 pages, 2 Postscript figures, uses colacl.sty, graphicx.sty, psfrag.sty
FOS: Computer and information sciences, D.3.1, Computer Science - Computation and Language, I.2.7, I.2.7; D.3.1, Computation and Language (cs.CL)
FOS: Computer and information sciences, D.3.1, Computer Science - Computation and Language, I.2.7, I.2.7; D.3.1, Computation and Language (cs.CL)
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