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Learning Socially Optimal Information Systems from Egoistic Users

机译:向利己用户学习社会最优信息系统

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Many information systems aim to present results that maximize the collective satisfaction of the user population. The product search of an online store, for example, needs to present an appropriately diverse set of products to best satisfy the different tastes and needs of its user population. To address this problem, we propose two algorithms that can exploit observable user actions (e.g. clicks) to learn how to compose diverse sets (and rankings) that optimize expected utility over a distribution of utility functions. A key challenge is that individual users evaluate and act according to their own utility function, but that the system aims to optimize collective satisfaction. We characterize the behavior of our algorithms by providing upper bounds on the social regret for a class of submodular utility functions in the coactive learning model. Furthermore, we empirically demonstrate the efficacy and robustness of the proposed algorithms for the problem of search result diversification.
机译:许多信息系统旨在提供使用户群体的集体满意度最大化的结果。例如,在线商店的产品搜索需要呈现一组适当多样化的产品,以最好地满足其用户群体的不同品味和需求。为了解决这个问题,我们提出了两种算法,可以利用可观察到的用户动作(例如点击)来学习如何组成各种集合(和排名),以优化效用函数分布上的预期效用。一个关键的挑战是个人用户根据自己的效用函数进行评估并采取行动,但是该系统旨在优化集体满意度。我们通过提供针对社交学习模型中一类亚模块效用函数的社会遗憾的上限来表征算法的行为。此外,我们通过经验证明了所提出算法对搜索结果多样化问题的有效性和鲁棒性。

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