Recommender system recommends interesting items to users based on users' past information history. Researchers have been paying attention to improvement of algorithmic performance such as MAE and precision@K. Major techniques such as matrix factorization and learning to rank are optimized based on such evaluation metrics. However, the intrinsic Matthew Effect problem poses great threat to the fairness of the recommender system, and the unfairness problem cannot be resolved by optimization of traditional metrics. In this paper, we propose a novel algorithm that incorporates Matthew Effect reduction with the matrix factorization framework. We demonstrate that our approach can boost the fairness of the algorithm and enhances performance evaluated by traditional metrics.
翻译:建议系统根据用户过去的信息历史向用户推荐有趣的项目。 研究人员一直注意改进算法性能,例如MAE和精确@K。 矩阵因数化和学习排名等主要技术根据这些评价指标得到优化。 但是,固有的Matthew效应问题对推荐者系统的公平性构成巨大威胁,而不公平问题无法通过优化传统指标来解决。 在本文中,我们建议了一种新型算法,将马修效应的减少与矩阵因数化框架结合起来。我们证明,我们的方法可以提高算法的公平性,提高由传统指标评估的绩效。