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INSPIRED: Toward Sociable Recommendation Dialog Systems

机译:灵感:迈向善于善于建议对话框系统

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In recommendation dialogs, humans commonly disclose their preference and make recommendations in a friendly manner. However, this is a challenge in developing a sociable recommendation dialog system, due to the lack of dialog dataset annotated with such sociable strategies. Therefore, we present INSPIRED, a new dataset of 1,001 human-human dialogs for movie recommendation with measures for successful recommendations. To better understand how humans make recommendations in communication, we design an annotation scheme related to recommendation strategies based on social science theories and annotate these dialogs. Our analysis shows that sociable recommendation strategies, such as sharing personal opinions or communicating with encouragement, more frequently lead to successful recommendations. Based on our dataset, we train end-to-end recommendation dialog systems with and without our strategy labels. In both automatic and human evaluation, our model with strategy incorporation outperforms the baseline model. This work is a first step for building sociable recommendation dialog systems with a basis of social science theories .
机译:在推荐对话中,人类通常披露他们的偏好并以友好的方式提出建议。然而,由于缺乏具有此类社交策略的对话框数据集,这是开发社交推荐对话框系统的挑战。因此,我们展示了一个灵感,一个新的数据集是1,001人人体对话的新数据集,用于电影建议,以措施为成功的建议。为了更好地了解人类如何在通信中提出建议,我们设计了与基于社会科学理论的建议策略相关的注释计划,并注释这些对话框。我们的分析表明,善于共享个人意见或与鼓励沟通的善于建议策略,更频繁地导致成功的建议。基于我们的数据集,我们培训与我们的策略标签的结束推荐对话框系统。在自动和人类评估中,我们的策略融合模型优于基线模型。这项工作是以社会科学理论为基础建立社会推荐对话系统的第一步。

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