利用群体推荐功能实现灵活的偏好

Senjuti Basu Roy, Saravanan Thirumuruganathan, S. Amer-Yahia, Gautam Das, Cong Yu
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引用次数: 31

摘要

我们研究了在群体推荐中如何灵活更新个人偏好的问题。在我们的设置中,任何组成员都可以提供一个偏好向量,除了过去的偏好和其他组成员的偏好之外,这些偏好向量将在计算组推荐时被考虑在内。此功能在许多群组推荐应用程序中都是必不可少的,例如旅行计划、在线游戏、读书俱乐部或战略投票,因为之前已经表明,用户偏好可能会因情绪、上下文和公司(即组中的其他人)而变化。偏好是在一个反馈框中执行的,这个反馈框通过一个可能不同的反馈向量取代了用户提供的偏好,这个反馈向量更适合在计算群体推荐时最大化个人满意度。反馈框与传统推荐框交互,传统推荐框以聚合投票(Aggregated Voting)或最小痛苦(Least Misery)的形式实现群体共识语义,这是两种流行的群体推荐聚合功能。我们开发了有效的算法来计算鲁棒的群体推荐,这些推荐适用于用户不断变化的偏好。我们对现实世界数据集的广泛实证研究验证了我们的发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting group recommendation functions for flexible preferences
We examine the problem of enabling the flexibility of updating one's preferences in group recommendation. In our setting, any group member can provide a vector of preferences that, in addition to past preferences and other group members' preferences, will be accounted for in computing group recommendation. This functionality is essential in many group recommendation applications, such as travel planning, online games, book clubs, or strategic voting, as it has been previously shown that user preferences may vary depending on mood, context, and company (i.e., other people in the group). Preferences are enforced in an feedback box that replaces preferences provided by the users by a potentially different feedback vector that is better suited for maximizing the individual satisfaction when computing the group recommendation. The feedback box interacts with a traditional recommendation box that implements a group consensus semantics in the form of Aggregated Voting or Least Misery, two popular aggregation functions for group recommendation. We develop efficient algorithms to compute robust group recommendations that are appropriate in situations where users have changing preferences. Our extensive empirical study on real world data-sets validates our findings.
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