Abstractive headline generation for spoken content by attentive recurrent neural networks with ASR error modeling

Lang-Chi Yu, Hung-yi Lee, Lin-Shan Lee
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引用次数: 6

Abstract

Headline generation for spoken content is important since spoken content is difficult to be shown on the screen and browsed by the user. It is a special type of abstractive summarization, for which the summaries are generated word by word from scratch without using any part of the original content. Many deep learning approaches for headline generation from text document have been proposed recently, all requiring huge quantities of training data, which is difficult for spoken document summarization. In this paper, we propose an ASR error modeling approach to learn the underlying structure of ASR error patterns and incorporate this model in an Attentive Recurrent Neural Network (ARNN) architecture. In this way, the model for abstractive headline generation for spoken content can be learned from abundant text data and the ASR data for some recognizers. Experiments showed very encouraging results and verified that the proposed ASR error model works well even when the input spoken content is recognized by a recognizer very different from the one the model learned from.
基于ASR误差建模的关注递归神经网络对口语内容的抽象标题生成
口语内容的标题生成非常重要,因为口语内容很难显示在屏幕上并被用户浏览。它是一种特殊类型的抽象摘要,它的摘要是在不使用原始内容的任何部分的情况下,一个字一个字地从头生成的。最近提出了许多从文本文档生成标题的深度学习方法,这些方法都需要大量的训练数据,这给口语文档的总结带来了困难。在本文中,我们提出了一种ASR误差建模方法来学习ASR误差模式的底层结构,并将该模型整合到一个关注递归神经网络(ARNN)体系结构中。这样,口语内容的抽象标题生成模型可以从丰富的文本数据和一些识别器的ASR数据中学习。实验显示了非常令人鼓舞的结果,并验证了所提出的ASR误差模型即使在输入的语音内容被一个与模型学习的识别器非常不同的识别器识别时也能很好地工作。
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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