Generating Abstractive Summaries from Meeting Transcripts
Siddhartha Banerjee, Prasenjit Mitra, Kazunari Sugiyama

TL;DR
This paper introduces a novel abstractive meeting summarization method that fuses important utterances using dependency parsing and ILP to produce more readable and informative summaries than extractive approaches.
Contribution
It presents a new approach combining topic segmentation, supervised importance detection, and ILP-based graph selection for abstractive meeting summarization.
Findings
Generated summaries are more informative than baselines.
Summaries are significantly more readable and well-formed.
Method outperforms extractive summarization in quality metrics.
Abstract
Summaries of meetings are very important as they convey the essential content of discussions in a concise form. Generally, it is time consuming to read and understand the whole documents. Therefore, summaries play an important role as the readers are interested in only the important context of discussions. In this work, we address the task of meeting document summarization. Automatic summarization systems on meeting conversations developed so far have been primarily extractive, resulting in unacceptable summaries that are hard to read. The extracted utterances contain disfluencies that affect the quality of the extractive summaries. To make summaries much more readable, we propose an approach to generating abstractive summaries by fusing important content from several utterances. We first separate meeting transcripts into various topic segments, and then identify the important…
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