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SAGA: A Submodular Greedy Algorithm for Group Recommendation

机译:SAGA:用于组建议的子模具贪婪算法

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In this paper, we propose a unified framework and an algorithm for the problem of group recommendation where a fixed number of items or alternatives can be recommended to a group of users. The problem of group recommendation arises naturally in many real world contexts, and is closely related to the budgeted social choice problem studied in economics. We frame the group recommendation problem as choosing a subgraph with the largest group consensus score in a completely connected graph defined over the item affinity matrix. We propose a fast greedy algorithm with strong theoretical guarantees, and show that the proposed algorithm compares favorably to the state-of-the-art group recommendation algorithms according to commonly used relevance and coverage performance measures on benchmark dataset.
机译:在本文中,我们提出了一个统一的框架和算法,用于组建议的问题,其中可以向一组用户建议一个固定数量的项目或替代方案。 群体建议的问题在许多现实世界环境中自然地出现,并且与经济学中学的预算的社会选择问题密切相关。 我们将组推荐问题框架选择一个具有最大组共识评分的子图,该分数在项目亲和矩阵上定义的完全连接的图表中。 我们提出了一种具有强大的理论保证的快速贪婪算法,并表明所提出的算法根据基准数据集的常用相关性和覆盖性能措施而有利地比较了最先进的组推荐算法。

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