Proactive Recommendation with Iterative Preference Guidance

ArXiv Pub Date : 2024-03-12 DOI:10.1145/3589335.3651548
Shuxian Bi, Wenjie Wang, Hang Pan, Fuli Feng, Xiangnan He
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Abstract

Recommender systems mainly tailor personalized recommendations according to user interests learned from user feedback. However, such recommender systems passively cater to user interests and even reinforce existing interests in the feedback loop, leading to problems like filter bubbles and opinion polarization. To counteract this, proactive recommendation actively steers users towards developing new interests in a target item or topic by strategically modulating recommendation sequences. Existing work for proactive recommendation faces significant hurdles: 1) overlooking the user feedback in the guidance process; 2) lacking explicit modeling of the guiding objective; and 3) insufficient flexibility for integration into existing industrial recommender systems. To address these issues, we introduce an Iterative Preference Guidance (IPG) framework. IPG performs proactive recommendation in a flexible post-processing manner by ranking items according to their IPG scores that consider both interaction probability and guiding value. These scores are explicitly estimated with iteratively updated user representation that considers the most recent user interactions. Extensive experiments validate that IPG can effectively guide user interests toward target interests with a reasonable trade-off in recommender accuracy. The code is available at https://github.com/GabyUSTC/IPG-Rec.
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通过迭代偏好指导进行主动推荐
推荐系统主要根据从用户反馈中了解到的用户兴趣定制个性化推荐。然而,这类推荐系统被动地迎合用户兴趣,甚至在反馈环路中强化已有兴趣,从而导致过滤泡沫和意见极化等问题。为了解决这一问题,主动推荐系统通过有策略地调整推荐序列,积极引导用户对目标项目或主题产生新的兴趣。现有的主动推荐工作面临着重大障碍:1)在引导过程中忽略了用户反馈;2)缺乏对引导目标的明确建模;3)灵活性不足,无法集成到现有的工业推荐系统中。为了解决这些问题,我们引入了迭代偏好引导(IPG)框架。IPG 以灵活的后处理方式执行主动推荐,根据项目的 IPG 分数(同时考虑互动概率和指导价值)进行排序。这些分数是根据迭代更新的用户代表估算的,其中考虑到了最近的用户交互。广泛的实验验证了 IPG 能有效地将用户兴趣导向目标兴趣,并在推荐准确性方面做出合理的权衡。代码可在 https://github.com/GabyUSTC/IPG-Rec 上获取。
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