Confidence Estimation and Deletion Prediction Using Bidirectional Recurrent Neural Networks

A. Ragni, Qiujia Li, M. Gales, Yu Wang
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引用次数: 30

Abstract

The standard approach to assess reliability of automatic speech transcriptions is through the use of confidence scores. If accurate, these scores provide a flexible mechanism to flag transcription errors for upstream and downstream applications. One challenging type of errors that recognisers make are deletions. These errors are not accounted for by the standard confidence estimation schemes and are hard to rectify in the upstream and downstream processing. High deletion rates are prominent in limited resource and highly mismatched training/testing conditions studied under IARPA Babel and Material programs. This paper looks at the use of bidirectional recurrent neural networks to yield confidence estimates in predicted as well as deleted words. Several simple schemes are examined for combination. To assess usefulness of this approach, the combined confidence score is examined for untranscribed data selection that favours transcriptions with lower deletion errors. Experiments are conducted using IARPA Babel/Material program languages.
基于双向递归神经网络的置信度估计与缺失预测
评估自动语音转录可靠性的标准方法是通过使用置信度分数。如果准确的话,这些分数提供了一个灵活的机制来标记上游和下游应用程序的转录错误。识别器犯的一种具有挑战性的错误是删除。这些误差不能用标准置信度估计方案来解释,而且很难在上游和下游处理中加以纠正。在IARPA Babel和Material项目研究的有限资源和高度不匹配的训练/测试条件下,高缺失率突出。本文着眼于使用双向递归神经网络在预测和删除的单词中产生置信度估计。研究了几种简单的组合方案。为了评估这种方法的有用性,我们检查了非转录数据选择的综合置信度评分,这些选择有利于具有较低缺失错误的转录。实验使用IARPA Babel/Material程序语言进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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