Despite increasing reliance on personalization in digital platforms, many algorithms that curate content or information for users have been met with resistance. When users feel dissatisfied or harmed by recommendations, this can lead users to hate, or feel negatively towards these personalized systems. Algorithmic hate detrimentally impacts both users and the system, and can result in various forms of algorithmic harm, or in extreme cases can lead to public protests against ''the algorithm'' in question. In this work, we summarize some of the most common causes of algorithmic hate and their negative consequences through various case studies of personalized recommender systems. We explore promising future directions for the RecSys research community that could help alleviate algorithmic hate and improve the relationship between recommender systems and their users.
翻译:尽管在数字平台上日益依赖个性化,但为用户翻译内容或信息的许多算法却遇到了阻力。当用户感到不满意或因建议而受到伤害时,这可能导致用户仇恨,或对这些个性化系统产生负面的感觉。 算法仇恨对用户和系统都产生了有害影响,并可能导致各种形式的算法伤害,或者在极端情况下可能导致公众对“算法”的质疑。 在这项工作中,我们通过个人化推荐系统的各种案例研究,总结了算法仇恨的一些最常见的原因及其消极后果。我们探索了RecSys研究界的未来前景,这些研究界可以帮助缓解算法仇恨,改善推荐系统与其用户之间的关系。