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Balancing Between Accuracy and Fairness for Interactive Recommendation with Reinforcement Learning

机译:强化学习与互动推荐的准确性与公平性之间的平衡

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Fairness in recommendation has attracted increasing attention due to bias and discrimination possibly caused by traditional rec-ommenders. In Interactive Recornmender Systems (IRS), user preferences and the system's fairness status are constantly changing over time. Existing fairness-aware recommenders mainly consider fairness in static settings. Directly applying existing methods to IRS will result in poor recommendation. To resolve this problem, we propose a reinforcement learning based framework, FairRec, to dynamically maintain a long-term balance between accuracy and fairness in IRS. User preferences and the system's fairness status are jointly compressed into the state representation to generate recommendations. FairRec aims at maximizing our designed cumulative reward that combines accuracy and fairness. Extensive experiments validate that FairRec can improve fairness, while preserving good recommendation quality.
机译:由于传统推荐人可能会产生偏见和歧视,因此推荐的公平性已引起越来越多的关注。在交互式Recornmender系统(IRS)中,用户偏好和系统的公平性状态会随着时间不断变化。现有的了解公平性的推荐程序主要考虑静态设置中的公平性。直接将现有方法应用于IRS会导致推荐不佳。为了解决此问题,我们提出了一个基于强化学习的框架FairRec,以动态地在IRS中保持准确性和公平性之间的长期平衡。用户偏好和系统的公平状态被联合压缩到状态表示中以生成建议。 FairRec旨在最大程度地实现我们设计的累积奖励,该奖励结合了准确性和公平性。大量的实验证明,FairRec可以提高公平性,同时保持良好的推荐质量。

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