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REJECTION USING RANK STATISTICS BASED ON HMM STATE SHORTLISTS

机译:基于HMM状态票据的秩统计数据拒绝拒绝

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We study a measure of confidence in the speech recognizer output based on a rank-order probability model of HMM state likelihoods. The motivation for rank models is based on the conjecture that statistics based on ranks are likely to be more robust than those based on the likelihood values, especially when the test and training distributions are mismatched. We investigate a number of different issues that arise in the development of rank models. We test the proposed rank-order model on two ASR rejection tasks: a combination of the log-likelihood ratio and rank order probability, yields relative reductions of the equal error rates of 31percent and 8percent (for the two tasks, respectively), over the loglikelihood ratio alone.
机译:我们研究了基于HMM状态似然性的秩序级概率模型对语音识别器输出的信心的衡量标准。等级模型的动机是基于猜想,即基于秩的统计数据可能比基于似然值更强大,特别是当测试和训练分布不匹配时。我们调查了秩型发展中出现的许多不同问题。我们在两个ASR拒绝任务上测试所提出的秩序模型:对数似然比和秩秩序概率的组合,产量相对减少31%的误差率和8percent(分别为两个任务),通过单独的loglikelihey比率。

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