Hierarchical RNN with Static Sentence-Level Attention for Text-Based Speaker Change Detection

Meng Zhao(Peking University), Lili Mou(University of Waterloo), Zhi Jin(Peking University)
Unknown
November 6, 2017
Cited by 31

Abstract

Speaker change detection (SCD) is an important task in dialog modeling. Our paper addresses the problem of text-based SCD, which differs from existing audio-based studies and is useful in various scenarios, for example, processing dialog transcripts where speaker identities are missing (e.g., OpenSubtitle), and enhancing audio SCD with textual information. We formulate text-based SCD as a matching problem of utterances before and after a certain decision point; we propose a hierarchical recurrent neural network (RNN) with static sentence-level attention. Experimental results show that neural networks consistently achieve better performance than feature-based approaches, and that our attention-based model significantly outperforms non-attention neural networks.


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