Lifelogging has gained more attention due to its wide applications, such as personalized recommendations or memory assistance. The issues of collecting and extracting personal life events have emerged. People often share their life experiences with others through conversations. However, extracting life events from conversations is rarely explored. In this paper, we present Life Event Dialog, a dataset containing fine-grained life event annotations on conversational data. In addition, we initiate a novel conversational life event extraction task and differentiate the task from the public event extraction or the life event extraction from other sources like microblogs. We explore three information extraction (IE) frameworks to address the conversational life event extraction task: OpenIE, relation extraction, and event extraction. A comprehensive empirical analysis of the three baselines is established. The results suggest that the current event extraction model still struggles with extracting life events from human daily conversations. Our proposed life event dialog dataset and in-depth analysis of IE frameworks will facilitate future research on life event extraction from conversations.
翻译:生活记录因其广泛的应用,如个性化推荐或记忆辅助而受到越来越多的关注。收集和提取个人生活事件的问题已经出现。人们经常通过对话与他人分享他们的生活经历。然而,从对话中提取生活事件很少被探讨。在本文中,我们提出了一个生活事件对话数据集(Life Event Dialog),其中包含对会话数据进行细粒度生活事件注释的内容。此外,我们启动了一项新的对话生活事件提取任务,并将其与公共事件提取任务或从其他来源(如微博)提取生活事件区分开来。我们探索了三种信息提取(IE)框架来解决对话生活事件提取任务:OpenIE、关系提取和事件提取。我们建立了三个基线的全面实证分析。结果表明,当前的事件提取模型仍然难以从人类日常对话中提取生活事件。我们提出的生活事件对话数据集和深入分析的IE框架将有助于未来从对话中提取生活事件的研究。