FairSR:基于偏好图嵌入的多任务学习的公平感知顺序推荐

Cheng-te Li, Cheng-Mao Hsu, Yang Zhang
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引用次数: 18

摘要

顺序推荐(SR)从用户-物品交互的时间动态中学习,以预测下一个交互。公平感知推荐减轻了在学习用户偏好时的各种算法偏差。本文旨在将SR与算法公平性结合起来。我们提出了一种新的公平感知的顺序推荐任务,其中定义了一个新的度量,即交互公平性,以估计具有不同保护属性组的用户如何公平地交互推荐项目。我们提出了一个基于多任务学习的深度端到端模型FairSR,该模型由两部分组成。一种是从给定的用户及其物品序列中学习并提取个性化的序列特征,另一种是公平感知偏好图嵌入(FPGE)。FPGE的目的是双重的:将用户和项目属性的知识及其相关性纳入实体表示,并减轻用户属性在项目上的不公平分布。在三个数据集上进行的大量实验表明,FairSR在推荐性能方面优于最先进的SR模型。此外,FairSR推荐项目也表现出良好的交互公平性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FairSR: Fairness-aware Sequential Recommendation through Multi-Task Learning with Preference Graph Embeddings
Sequential recommendation (SR) learns from the temporal dynamics of user-item interactions to predict the next ones. Fairness-aware recommendation mitigates a variety of algorithmic biases in the learning of user preferences. This article aims at bringing a marriage between SR and algorithmic fairness. We propose a novel fairness-aware sequential recommendation task, in which a new metric, interaction fairness, is defined to estimate how recommended items are fairly interacted by users with different protected attribute groups. We propose a multi-task learning-based deep end-to-end model, FairSR, which consists of two parts. One is to learn and distill personalized sequential features from the given user and her item sequence for SR. The other is fairness-aware preference graph embedding (FPGE). The aim of FPGE is two-fold: incorporating the knowledge of users’ and items’ attributes and their correlation into entity representations, and alleviating the unfair distributions of user attributes on items. Extensive experiments conducted on three datasets show FairSR can outperform state-of-the-art SR models in recommendation performance. In addition, the recommended items by FairSR also exhibit promising interaction fairness.
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