Topic-Aware Response Generation in Task-Oriented Dialogue with Unstructured Knowledge Access

Yue Feng, Gerasimos Lampouras, Ignacio Iacobacci
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引用次数: 1

Abstract

To alleviate the problem of structured databases' limited coverage, recent task-oriented dialogue systems incorporate external unstructured knowledge to guide the generation of system responses. However, these usually use word or sentence level similarities to detect the relevant knowledge context, which only partially capture the topical level relevance. In this paper, we examine how to better integrate topical information in knowledge grounded task-oriented dialogue and propose ``Topic-Aware Response Generation'' (TARG), an end-to-end response generation model. TARG incorporates multiple topic-aware attention mechanisms to derive the importance weighting scheme over dialogue utterances and external knowledge sources towards a better understanding of the dialogue history. Experimental results indicate that TARG achieves state-of-the-art performance in knowledge selection and response generation, outperforming previous state-of-the-art by 3.2, 3.6, and 4.2 points in EM, F1 and BLEU-4 respectively on Doc2Dial, and performing comparably with previous work on DSTC9; both being knowledge-grounded task-oriented dialogue datasets.
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面向任务的非结构化知识访问对话中的主题感知响应生成
为了减轻结构化数据库覆盖范围有限的问题,最近面向任务的对话系统结合了外部非结构化知识来指导系统响应的生成。然而,这些方法通常使用单词或句子级别的相似性来检测相关知识上下文,这只能部分捕获主题级别的相关性。在本文中,我们研究了如何在基于知识的任务导向对话中更好地整合主题信息,并提出了“主题感知响应生成”(Topic-Aware Response Generation, TARG),这是一种端到端响应生成模型。TARG结合多个话题感知注意机制,推导出对话话语和外部知识来源的重要性加权方案,从而更好地理解对话历史。实验结果表明,TARG在知识选择和响应生成方面达到了最先进的水平,在Doc2Dial上EM、F1和BLEU-4分别高出3.2、3.6和4.2分,在DSTC9上与前人相当;都是基于知识的、面向任务的对话数据集。
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