多模态局部搜索应用中基于隐式用户反馈的N-Best修正模型学习

D. Bohus, Xiao Li, Patrick Nguyen, G. Zweig
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引用次数: 3

摘要

我们描述了一种新颖的n-best校正模型,该模型可以利用隐含的用户反馈(以点击的形式)来提高多模态语音搜索应用程序的性能。所提出的模型分为两个阶段。首先,基于通过用户点击统计捕获的混淆性信息,将语音识别器生成的n个最佳列表扩展为其他候选列表。在第二阶段,这个扩展列表被恢复和修剪,以产生一个更精确和紧凑的n-best列表。结果表明,与现有基线以及其他传统的n-best评分方法相比,所提出的n-best校正模型具有显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning N-Best Correction Models from Implicit User Feedback in a Multi-Modal Local Search Application
We describe a novel n-best correction model that can leverage implicit user feedback (in the form of clicks) to improve performance in a multi-modal speech-search application. The proposed model works in two stages. First, the n-best list generated by the speech recognizer is expanded with additional candidates, based on confusability information captured via user click statistics. In the second stage, this expanded list is rescored and pruned to produce a more accurate and compact n-best list. Results indicate that the proposed n-best correction model leads to significant improvements over the existing baseline, as well as other traditional n-best rescoring approaches.
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