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On the negative impact of social influence in recommender systems: A study of bribery in collaborative hybrid algorithms

机译:推荐系统中社会影响力的负面影响:协同混合算法中的贿赂问题研究

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摘要

Recommender systems are based on inherent forms of social influence. Indeed, suggestions are provided to the users based on the opinions of peers. Given the relevance that ratings have nowadays to push the sales of an item, sellers might decide to bribe users so that they rate or change the ratings given to items, thus increasing the sellers' reputation. Hence, by exploiting the fact that influential users can lead an item to get recommended, bribing can become an effective way to negatively exploit social influence and introduce a bias in the recommendations. Given that bribing is forbidden but still employed by sellers, we propose a novel matrix completion algorithm that performs hybrid memory-based collaborative filtering using an approximation of Kolmogorov complexity. We also propose a framework to study the bribery effect and the bribery resistance of our approach. Our theoretical analysis, validated through experiments on real-world datasets, shows that our approach is an effective way to counter bribing while, with state-of-the-art algorithms, sellers can bribe a large part of the users.
机译:推荐人制度基于社会影响力的固有形式。实际上,基于同伴的意见向用户提供了建议。考虑到当今等级与推动商品销售的相关性,卖家可能决定贿赂用户,以便他们对商品进行评级或更改等级,从而提高卖家的声誉。因此,通过利用有影响力的用户可以引导某项商品获得推荐的事实,行贿可以成为消极利用社会影响力并在推荐中引入偏见的有效方法。考虑到贿赂是禁止的,但仍由卖方使用,我们提出了一种新颖的矩阵完成算法,该算法使用Kolmogorov复杂度的近似值执行基于混合内存的协作过滤。我们还提出了一个框架来研究我们方法的贿赂效应和贿赂抵抗力。我们的理论分析通过对真实数据集的实验验证,表明我们的方法是一种反贿赂的有效方法,而使用最新的算法,卖方可以贿赂很大一部分用户。

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  • 来源
    《Information Processing & Management》 |2020年第2期|102058.1-102058.18|共18页
  • 作者

  • 作者单位

    Instimto de Sistemas e Robotica Dept. of Electrical and Computer Engineering Instituto Superior Tecnico University of Lisbon Lisbon Portugal SQ1G - Instituto de Telecomunicacoes Department of Mathematics Instituto Superior Tecnico University of Lisbon Lisbon Portugal;

    Data Science and Big Data Analytics EURECAT (Centre Tecnologic de Catalunya) Carrer de Bilbao 72 (Edifici A) Barcelona 08005 Spain;

    SQ1G - Instituto de Telecomunicacoes Department of Mathematics Instituto Superior Tecnico University of Lisbon Lisbon Portugal;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Bribing; Algorithmic bias; Social influence;

    机译:贿赂;算法偏差社会影响力;
  • 入库时间 2022-08-18 05:22:50

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