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Robust Optimization of Recommendation Sets with the Maximin Utility Criterion

机译:具有Maximin实用程序标准的强大优化推荐集

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We investigate robust decision-making under utility uncertainty, using the maximin criterion, which optimizes utility for the worst case setting. We show how it is possible to efficiently compute the maximin optimal recommendation in face of utility uncertainty, even in large configuration spaces. We then introduce a new decision criterion, setwise maximin utility (SMMU), for constructing optimal recommendation sets: we develop algorithms for computing SMMU and present experimental results showing their performance. Finally, we discuss the problem of elicitation and prove (analogously to previous results related to regret-based and Bayesian elicitation) that SMMU leads to myopically optimal query sets.
机译:我们使用Maximin标准调查公用事业不确定性的强大决策,该标准优化了最坏情况下的实用程序。我们展示了如何在面对公用事业不确定性方面有效地计算最大值的最佳推荐,即使在大型配置空间中也是如此。然后,我们介绍了一个新的决策标准,SetWise Maximin实用程序(SMMU),用于构建最佳推荐集:我们开发用于计算SMMU的算法,并呈现出现其性能的实验结果。最后,我们讨论了诱导和证明的问题(类似于以前的结果与遗憾的遗憾和贝叶斯诱导相关),SMMU将导致神秘的最佳查询集。

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