在推荐中公平曝光提供商的成本敏感元学习策略

Ludovico Boratto, Giulia Cerniglia, M. Marras, Alessandra Perniciano, Barbara Pes
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引用次数: 0

摘要

在设计推荐服务时,必须考虑到所有内容提供者的利益,不仅包括新用户,也包括少数人口群体。在各种情况下,某些提供商群体发现自己在项目目录中的代表性不足,这种情况会影响推荐结果。因此,平台所有者通常会设法调节这些提供商群体在推荐列表中的曝光率。在本文中,我们提出了一种新颖的成本敏感型方法,旨在保证成对推荐模型中的目标曝光水平。在公平原则下,该方法量化了分配给群体的推荐量与他们在项目目录中的贡献之间的差异,并因此减轻了这种差异。我们的研究结果表明,这种方法在使各组的曝光率与其分配的等级保持一致的同时,并不会损害原有的推荐效用。源代码和预处理数据可在 https://github.com/alessandraperniciano/meta-learning-strategy-fair-provider-exposure 上检索。
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A Cost-Sensitive Meta-Learning Strategy for Fair Provider Exposure in Recommendation
When devising recommendation services, it is important to account for the interests of all content providers, encompassing not only newcomers but also minority demographic groups. In various instances, certain provider groups find themselves underrepresented in the item catalog, a situation that can influence recommendation results. Hence, platform owners often seek to regulate the exposure of these provider groups in the recommended lists. In this paper, we propose a novel cost-sensitive approach designed to guarantee these target exposure levels in pairwise recommendation models. This approach quantifies, and consequently mitigate, the discrepancies between the volume of recommendations allocated to groups and their contribution in the item catalog, under the principle of equity. Our results show that this approach, while aligning groups exposure with their assigned levels, does not compromise to the original recommendation utility. Source code and pre-processed data can be retrieved at https://github.com/alessandraperniciano/meta-learning-strategy-fair-provider-exposure.
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