In this paper, we address the issue of recommending fairly from the aspect of providers, which has become increasingly essential in multistakeholder recommender systems. Existing studies on provider fairness usually focused on designing proportion fairness (PF) metrics that first consider systematic fairness. However, sociological researches show that to make the market more stable, max-min fairness (MMF) is a better metric. The main reason is that MMF aims to improve the utility of the worst ones preferentially, guiding the system to support the providers in weak market positions. When applying MMF to recommender systems, how to balance user preferences and provider fairness in an online recommendation scenario is still a challenging problem. In this paper, we proposed an online re-ranking model named Provider Max-min Fairness Re-ranking (P-MMF) to tackle the problem. Specifically, P-MMF formulates provider fair recommendation as a resource allocation problem, where the exposure slots are considered the resources to be allocated to providers and the max-min fairness is used as the regularizer during the process. We show that the problem can be further represented as a regularized online optimizing problem and solved efficiently in its dual space. During the online re-ranking phase, a momentum gradient descent method is designed to conduct the dynamic re-ranking. Theoretical analysis showed that the regret of P-MMF can be bounded. Experimental results on four public recommender datasets demonstrated that P-MMF can outperformed the state-of-the-art baselines. Experimental results also show that P-MMF can retain small computationally costs on a corpus with the large number of items.
翻译:在本文中,我们从提供者的角度提出公平建议的问题,这种建议在多方利益攸关方建议系统中越来越重要。关于提供者公平的现有研究通常侧重于设计比例公平(PF)衡量标准,首先考虑系统公平。然而,社会学研究显示,为使市场更加稳定,最大公平(MMF)是一个更好的衡量标准。主要原因是MMF的目的是改善最差的效益,优先指导系统支持市场地位薄弱的提供者。在应用MMF系统推荐建议系统时,如何平衡用户偏好和在线建议情景中的供应商公平仍然是一个棘手问题。在本文件中,我们提议了名为“提供者-分钟公平(P-MMMF)衡量标准(P-MMF)”的在线排名模型来解决这一问题。具体地说,PMF将供应商公平建议作为一种资源分配问题,将风险位置视为应分配给提供者的资源,而最大公平性标准在这一过程中可以用作固定的调节。我们指出,这一问题可以进一步作为定期在线优化问题,并在双层空间中高效地解决。在P-MMMML进行大规模实验分析期间,可以展示一个动态的升级后期数据。</s>