Query-focused meeting summarization (QFMS) aims to generate summaries from meeting transcripts in response to a given query. Previous works typically concatenate the query with meeting transcripts and implicitly model the query relevance only at the token level with attention mechanism. However, due to the dilution of key query-relevant information caused by long meeting transcripts, the original transformer-based model is insufficient to highlight the key parts related to the query. In this paper, we propose a query-aware framework with joint modeling token and utterance based on Query-Utterance Attention. It calculates the utterance-level relevance to the query with a dense retrieval module. Then both token-level query relevance and utterance-level query relevance are combined and incorporated into the generation process with attention mechanism explicitly. We show that the query relevance of different granularities contributes to generating a summary more related to the query. Experimental results on the QMSum dataset show that the proposed model achieves new state-of-the-art performance.
翻译:以查询为重点的会议摘要(QFMS)旨在根据特定查询生成会议记录誊本的摘要。以往的工作通常将查询与会议记录誊本混为一谈,并隐含地将查询相关性只以象征性的方式与关注机制混为一谈。然而,由于长会记录誊本导致关键查询相关信息的稀释,原变压器模型不足以突出与查询有关的关键部分。在本文件中,我们提议了一个有查询意识的框架,根据查询-功能注意联合建模符号和发音。它用密集的检索模块计算出对查询的发音相关性。然后,将象征性查询相关性和发音级别的查询相关性结合起来,并以关注机制明确纳入生成过程。我们表明,不同微粒的查询相关性有助于产生与查询更相关的摘要。QMSum数据集的实验结果显示,拟议的模型取得了新的最新性性能。</s>