网络友好推荐中的公平性

Theodoros Giannakas, Pavlos Sermpezis, A. Giovanidis, T. Spyropoulos, G. Arvanitakis
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引用次数: 3

摘要

由于移动流量主要由内容服务(例如视频)主导,通常使用推荐系统,因此最近提出了网络友好推荐(NFR)范例,通过促进可以有效交付的内容(例如,缓存在边缘)来提高网络性能。NFR提高了网络性能,但是,与标准建议相比,代价是对某些内容不公平。这种不公平是NFR的副作用,尚未在文献中研究。然而,保持内容之间的公平性是内容提供者的关键操作需求。本文首次对NFR中的公平性进行了研究,并设计了公平的NFR。具体来说,我们使用了一组捕获不同公平概念的指标,并研究了现有NFR方案产生的不公平。我们的分析表明,NFR可能非常不公平。我们确定了NFR获得的网络收益与由此产生的不公平性之间的内在权衡,并推导了这种权衡的界限。我们表明,现有的NFR方案经常远离边界,即有改进的空间。为此,我们将Fair-NFR(即与基线建议相比具有公平性保证的NFR)的设计表述为线性优化问题。我们的研究结果表明,Fair-NFR可以在不公平的情况下获得较高的网络增益(类似于non-fair-NFR)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fairness in Network-Friendly Recommendations
As mobile traffic is dominated by content services (e.g., video), which typically use recommendation systems, the paradigm of network-friendly recommendations (NFR) has been proposed recently to boost the network performance by promoting content that can be efficiently delivered (e.g., cached at the edge). NFR increase the network performance, however, at the cost of being unfair towards certain contents when compared to the standard recommendations. This unfairness is a side effect of NFR that has not been studied in literature. Nevertheless, retaining fairness among contents is a key operational requirement for content providers. This paper is the first to study the fairness in NFR, and design fair-NFR. Specifically, we use a set of metrics that capture different notions of fairness, and study the unfairness created by existing NFR schemes. Our analysis reveals that NFR can be significantly unfair. We identify an inherent trade-off between the network gains achieved by NFR and the resulting unfairness, and derive bounds for this trade-off. We show that existing NFR schemes frequently operate far from the bounds, i.e., there is room for improvement. To this end, we formulate the design of Fair-NFR (i.e., NFR with fairness guarantees compared to the baseline recommendations) as a linear optimization problem. Our results show that the Fair-NFR can achieve high network gains (similar to non-fair-NFR) with little unfairness.
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