会话组推荐系统

T. Nguyen
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引用次数: 10

摘要

向一组用户推荐是多方面的,因为人们会自然地适应其他成员,并且可能会发现他们在组中选择的内容并不完全符合个人兴趣。此外,研究表明,群体的推荐需求超越了个人偏好的总和。在实践中,预测群体选择要困难得多,因为用户会考虑其他人的反应,不同的用户对群体的反应也不同。因此,在本研究中,我们的目标是利用一种互动和对话的方法来促进群体决策过程,在这个过程中,个人满意度和群体整体满意度之间的复杂权衡通常会发生,需要得到解决。为了实现这一目标,我们研究了能够进入群体情境并在群体的特定条件下自主学习适应性互动的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conversational Group Recommender Systems
Recommending to a group of users is multifaceted as people naturally adapt to other members, and it may turn out that what they choose in a group does not fully match individual interests. Besides, it has been shown that the recommendation needs of groups go beyond the aggregation of individual preferences. In practice, it is much more difficult to predict group choices because users take into account the others' reactions and different users react to the group in different ways. Thus, in this research, we aim at exploiting an interactive and conversational approach to facilitate the group decision-making process where the complex trade-off between the satisfaction of an individual and the group as a whole typically occurs and needs to be resolved. To attain this goal, we investigate approaches that can access a group situation and autonomously learn an adaptive interaction in a specific condition of the group.
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