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首页> 外文期刊>International Journal of Data Science and Analytics >FaiRecSys: mitigating algorithmic bias in recommender systems
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FaiRecSys: mitigating algorithmic bias in recommender systems

机译:FaiRecSys:减轻推荐系统中的算法偏差

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Recommendation and personalization are useful technologies which influence more and more our daily decisions. However, as we show empirically in this paper, the bias that exists in the real world and which is reflected in the training data can be modeled and amplified by recommender systems and in the end returned as biased recommendations to the users. This feedback process creates a self-perpetuating loop which progressively strengthens the filter bubbles we live in. Biased recommendations can also reinforce stereotypes such as those based on gender or ethnicity, possibly resulting in disparate impact. In this paper we address the problem of algorithmic bias in recommender systems. In particular, we highlight the connection between predictability of sensitive features and bias in the results of recommendations and we then offer a theoretically founded bound on recommendation bias based on that connection. We continue to formalize a fairness constraint and the price that one has to pay, in terms of alterations in the recommendation matrix, in order to achieve fair recommendations. Finally, we propose FAIRECSYS—an algorithm that mitigates algorithmic bias by post-processing the recommendation matrix with minimum impact on the utility of recommendations provided to the end-users.
机译:推荐和个性化是有用的技术,会越来越影响我们的日常决策。但是,正如我们在本文中凭经验表明的那样,可以通过推荐器系统对存在于现实世界中并反映在训练数据中的偏差进行建模和放大,最后将其作为偏差的推荐返回给用户。这种反馈过程会形成一个自我延续的循环,从而逐渐增强我们所生活的过滤器气泡。有偏见的建议还可以加强刻板印象,例如基于性别或种族的刻板印象,可能会产生不同的影响。在本文中,我们解决了推荐系统中的算法偏差问题。特别是,我们强调了推荐结果中敏感特征的可预测性与偏差之间的联系,然后我们基于该联系为推荐偏差提供了理论上的依据。我们将继续对公平约束和形式进行正式化,以实现公平的推荐。最后,我们提出了FAIRECSYS-一种通过对推荐矩阵进行后处理而减轻算法偏差的算法,同时对提供给最终用户的推荐的效用影响最小。

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