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Information Seeking in the Spirit of Learning: A Dataset for Conversational Curiosity

机译:寻求学习精神的信息:用于会话好奇心的数据集

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Open-ended human learning and information-seeking are increasingly mediated by digital assistants. However, such systems often ignore the user's pre-existing knowledge. Assuming a correlation between engagement and user responses such as "liking" messages or asking followup questions, we design a Wizard-of-Oz dialog task that tests the hypothesis that engagement increases when users are presented with facts related to what they know. Through crowd-sourcing of this experiment, we collect and release 14K dialogs (181K utterances) where users and assistants converse about geographic topics like geopolitical entities and locations. This dataset is annotated with pre-existing user knowledge, message-level dialog acts, grounding to Wikipedia, and user reactions to messages. Responses using a user's prior knowledge increase engagement. We incorporate this knowledge into a multi-task model that reproduces human assistant policies and improves over a BERT content model by 13 mean reciprocal rank points.
机译:开放式的人类学习和信息搜索正日益受到数字助理介导的。然而,这种系统往往忽略了用户的预先存在的知识。假设参与和用户响应之间的相关性,如“喜欢”的消息或询问后续问题,我们设计,测试的假设,参与时增加用户呈现与他们所知道的事实,一个向导的盎司对话框任务。通过这个实验的众包,我们收集和发布14K对话框(181K话语),用户和助手交谈有关地理主题,如地缘政治实体和地点。此数据集注释与预先存在的用户的知识,消息级对话框作用,接地维基百科,以及用户反应的消息。使用用户的先验知识提高参与响应。我们将这一知识转化成再现人类助手政策,并提高了13个平均倒数排名分BERT内容模型多任务模式。

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