Article ID Journal Published Year Pages File Type
515877 Information Processing & Management 2013 10 Pages PDF
Abstract

Language modeling (LM), providing a principled mechanism to associate quantitative scores to sequences of words or tokens, has long been an interesting yet challenging problem in the field of speech and language processing. The n-gram model is still the predominant method, while a number of disparate LM methods, exploring either lexical co-occurrence or topic cues, have been developed to complement the n-gram model with some success. In this paper, we explore a novel language modeling framework built on top of the notion of relevance for speech recognition, where the relationship between a search history and the word being predicted is discovered through different granularities of semantic context for relevance modeling. Empirical experiments on a large vocabulary continuous speech recognition (LVCSR) task seem to demonstrate that the various language models deduced from our framework are very comparable to existing language models both in terms of perplexity and recognition error rate reductions.

► Speech recognition can benefit from relevance modeling (RM). ► Further exploration of topic cues can boost the performance of RM. ► RM can be fulfilled through different granularities of semantic context. ► The derived RM models seem to be complementary to the other existing ones.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science Applications
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