Uncertainty-Aware Representations for Spoken Question Answering

Merve Ünlü Menevşe, E. Arisoy
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引用次数: 2

Abstract

This paper describes a spoken question answering system that utilizes the uncertainty in automatic speech recognition (ASR) to mitigate the effect of ASR errors on question answering. Spoken question answering is typically performed by transcribing spoken con-tent with an ASR system and then applying text-based question answering methods to the ASR transcriptions. Question answering on spoken documents is more challenging than question answering on text documents since ASR transcriptions can be erroneous and this degrades the system performance. In this paper, we propose integrating confusion networks with word confidence scores into an end-to-end neural network-based question answering system that works on ASR transcriptions. Integration is performed by generating uncertainty-aware embedding representations from confusion networks. The proposed approach improves F1 score in a question answering task developed for spoken lectures by providing tighter integration of ASR and question answering.
口语问答的不确定性感知表征
本文介绍了一种利用自动语音识别(ASR)中的不确定性来减轻自动语音识别错误对语音应答的影响的语音问答系统。口语问答通常是通过使用ASR系统转录口语内容,然后将基于文本的问答方法应用于ASR转录。口语文档的问题回答比文本文档的问题回答更具挑战性,因为ASR转录可能是错误的,这会降低系统的性能。在本文中,我们提出将混淆网络与单词置信度分数集成到一个端到端基于神经网络的问答系统中,该系统适用于ASR转录。集成是通过从混淆网络中生成不确定性感知嵌入表示来实现的。提出的方法通过将ASR和问答更紧密地集成在一起,提高了为口语讲座开发的问答任务中的F1分数。
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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