4.5 Review

Shortlist B: A Bayesian model of continuous speech recognition

期刊

PSYCHOLOGICAL REVIEW
卷 115, 期 2, 页码 357-395

出版社

AMER PSYCHOLOGICAL ASSOC
DOI: 10.1037/0033-295X.115.2.357

关键词

spoken-word recognition; Bayesian modeling; continuous speech

资金

  1. Medical Research Council [MC_U105580447] Funding Source: Medline
  2. MRC [MC_U105580447] Funding Source: UKRI

向作者/读者索取更多资源

A Bayesian model of continuous speech recognition is presented. It is based on Shortlist (D. Norris, 1994; D. Norris, J. M. McQueen, A. Cutler, & S. Butterfield, 1997) and shares many of its key assumptions: parallel competitive evaluation of multiple lexical hypotheses, phonologically abstract prelexical and lexical representations, a feedforward architecture with no online feedback, and a lexical segmentation algorithm based on the viability of chunks of the input as possible words. Shortlist B is radically different from its predecessor in two respects. First, whereas Shortlist was a connectionist model based on interactive-activation principles, Shortlist B is based on Bayesian principles. Second, the input to Shortlist B is no longer a sequence of discrete phonemes; it is a sequence of multiple phoneme probabilities over 3 time slices per segment, derived from the performance of listeners in a large-scale gating study. Simulations are presented showing that the model can account for key findings: data on the segmentation of continuous speech, word frequency effects, the effects of mispronunciations on word recognition, and evidence on lexical involvement in phonemic decision making. The success of Shortlist B suggests that listeners make optimal Bayesian decisions during spoken-word recognition.

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