利用卷积神经网络技术提取语音摘要

Chun-I Tsai, Hsiao-Tsung Hung, Kuan-Yu Chen, Berlin Chen
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引用次数: 13

摘要

摘要文本或语音摘要是从源文档中选择有代表性的句子,并将其组合成一个简洁的摘要,以帮助人们高效地浏览和吸收文档的主题。最近,人们对开发基于深度学习或深度神经网络的监督方法的兴趣激增,用于提取文本摘要。本文是语音摘要研究的延续,其贡献有三个方面。首先,我们利用了一个有效的框架,该框架集成了两个卷积神经网络(cnn)和一个多层感知器(MLP),用于总结句子的选择。具体来说,cnn将给定的文档-句子对分别编码为两个判别向量嵌入,而MLP则将文档-句子对的两个嵌入及其相似度测度作为输入,从而得出每个句子的排名分数。其次,MLP的输入被丰富的韵律和词汇特征所增强,而这些特征不仅仅来源于cnn。第三,对本文提出的总结方法和几种常用方法的实用性进行了广泛的分析和比较。实证结果似乎证明了我们的总结方法与几种最先进的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extractive speech summarization leveraging convolutional neural network techniques
Extractive text or speech summarization endeavors to select representative sentences from a source document and assemble them into a concise summary, so as to help people to browse and assimilate the main theme of the document efficiently. The recent past has seen a surge of interest in developing deep learning- or deep neural network-based supervised methods for extractive text summarization. This paper presents a continuation of this line of research for speech summarization and its contributions are three-fold. First, we exploit an effective framework that integrates two convolutional neural networks (CNNs) and a multilayer perceptron (MLP) for summary sentence selection. Specifically, CNNs encode a given document-sentence pair into two discriminative vector embeddings separately, while MLP in turn takes the two embeddings of a document-sentence pair and their similarity measure as the input to induce a ranking score for each sentence. Second, the input of MLP is augmented by a rich set of prosodic and lexical features apart from those derived from CNNs. Third, the utility of our proposed summarization methods and several widely-used methods are extensively analyzed and compared. The empirical results seem to demonstrate the effectiveness of our summarization method in relation to several state-of-the-art methods.
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