Two-layer mutually reinforced random walk for improved multi-party meeting summarization

Yun-Nung (Vivian) Chen, Florian Metze
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引用次数: 28

Abstract

This paper proposes an improved approach of summarization for spoken multi-party interaction, in which a two-layer graph with utterance-to-utterance, speaker-to-speaker, and speaker-to-utterance relations is constructed. Each utterance and each speaker are represented as a node in the utterance-layer and speaker-layer of the graph respectively, and the edge between two nodes is weighted by the similarity between the two utterances, the two speakers, or the utterance and the speaker. The relation between utterances is evaluated by lexical similarity via word overlap or topical similarity via probabilistic latent semantic analysis (PLSA). By within- and between-layer propagation in the graph, the scores from different layers can be mutually reinforced so that utterances can automatically share the scores with the utterances from the same speaker and similar utterances. For both ASR output and manual transcripts, experiments confirmed the efficacy of involving speaker information in the two-layer graph for summarization.
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改进多方会议摘要的两层相互强化随机漫步
本文提出了一种改进的语音多方交互摘要方法,该方法构造了一个包含话语对话语、说话人对说话人和说话人对说话人关系的两层图。每个话语和每个说话人分别表示为图的话语层和说话人层中的一个节点,两个节点之间的边缘由两个话语、两个说话人或话语与说话人之间的相似度加权。话语之间的关系通过单词重叠的词汇相似度或通过概率潜在语义分析(PLSA)的主题相似度来评估。通过图中的层内传播和层间传播,可以使不同层的分数相互增强,使话语自动与同一说话者和相似话语的话语共享分数。对于ASR输出和人工转录本,实验证实了将说话人信息纳入双层图进行总结的有效性。
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Combining criteria for the detection of incorrect entries of non-native speech in the context of foreign language learning Two-layer mutually reinforced random walk for improved multi-party meeting summarization Train&align: A new online tool for automatic phonetic alignment Automatic detection and correction of syntax-based prosody annotation errors Word segmentation through cross-lingual word-to-phoneme alignment
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