公平匹配:一种基于图的提高推荐系统总体多样性的方法

M. Mansoury, Himan Abdollahpouri, Mykola Pechenizkiy, B. Mobasher, R. Burke
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引用次数: 42

摘要

推荐系统往往偏向于流行的项目。换句话说,很少有项目经常被推荐,而大多数项目没有得到相应的关注。这导致推荐列表中的项目在用户之间的低覆盖率(即低总多样性)和推荐项目的不公平分配。在本文中,我们介绍了FairMatch,这是一种通用的基于图的算法,作为推荐生成后的后处理方法,用于提高聚合多样性。该算法迭代地找到很少被推荐但质量高的项目,并将其添加到用户的最终推荐列表中。这是通过解决推荐二部图上的最大流量问题来实现的。虽然我们关注的是推荐项目的总体多样性和公平分配,但该算法可以使用不同的公平底层定义来适应其他推荐场景。在两个数据集上进行的一组综合实验以及与最新基线的比较表明,FairMatch在显著提高集合多样性的同时,提供了相当的推荐准确性。
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FairMatch: A Graph-based Approach for Improving Aggregate Diversity in Recommender Systems
Recommender systems are often biased toward popular items. In other words, few items are frequently recommended while the majority of items do not get proportionate attention. That leads to low coverage of items in recommendation lists across users (i.e. low aggregate diversity) and unfair distribution of recommended items. In this paper, we introduce FairMatch, a general graph-based algorithm that works as a post-processing approach after recommendation generation for improving aggregate diversity. The algorithm iteratively finds items that are rarely recommended yet are high-quality and add them to the users' final recommendation lists. This is done by solving the maximum flow problem on the recommendation bipartite graph. While we focus on aggregate diversity and fair distribution of recommended items, the algorithm can be adapted to other recommendation scenarios using different underlying definitions of fairness. A comprehensive set of experiments on two datasets and comparison with state-of-the-art baselines show that FairMatch, while significantly improving aggregate diversity, provides comparable recommendation accuracy.
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