Aspect-based Meeting Transcript Summarization: A Two-Stage Approach with Weak Supervision on Sentence Classification (2311.04292v1)
Abstract: Aspect-based meeting transcript summarization aims to produce multiple summaries, each focusing on one aspect of content in a meeting transcript. It is challenging as sentences related to different aspects can mingle together, and those relevant to a specific aspect can be scattered throughout the long transcript of a meeting. The traditional summarization methods produce one summary mixing information of all aspects, which cannot deal with the above challenges of aspect-based meeting transcript summarization. In this paper, we propose a two-stage method for aspect-based meeting transcript summarization. To select the input content related to specific aspects, we train a sentence classifier on a dataset constructed from the AMI corpus with pseudo-labeling. Then we merge the sentences selected for a specific aspect as the input for the summarizer to produce the aspect-based summary. Experimental results on the AMI corpus outperform many strong baselines, which verifies the effectiveness of our proposed method.
- Zhongfen Deng (13 papers)
- Seunghyun Yoon (64 papers)
- Trung Bui (79 papers)
- Franck Dernoncourt (161 papers)
- Quan Hung Tran (20 papers)
- Shuaiqi Liu (12 papers)
- Wenting Zhao (44 papers)
- Tao Zhang (481 papers)
- Yibo Wang (111 papers)
- Philip S. Yu (592 papers)