Fairness in Recommendation: Foundations, Methods and Applications
- URL: http://arxiv.org/abs/2205.13619v5
- Date: Wed, 26 Jul 2023 03:20:47 GMT
- Title: Fairness in Recommendation: Foundations, Methods and Applications
- Authors: Yunqi Li, Hanxiong Chen, Shuyuan Xu, Yingqiang Ge, Juntao Tan,
Shuchang Liu, Yongfeng Zhang
- Abstract summary: This survey focuses on the foundations for fairness in recommendation literature.
It first presents a brief introduction about fairness in basic machine learning tasks such as classification and ranking.
After that, the survey will introduce fairness in recommendation with a focus on the definitions, the typical techniques for improving fairness, as well as the datasets for fairness studies in recommendation.
- Score: 38.63520487389138
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As one of the most pervasive applications of machine learning, recommender
systems are playing an important role on assisting human decision making. The
satisfaction of users and the interests of platforms are closely related to the
quality of the generated recommendation results. However, as a highly
data-driven system, recommender system could be affected by data or algorithmic
bias and thus generate unfair results, which could weaken the reliance of the
systems. As a result, it is crucial to address the potential unfairness
problems in recommendation settings. Recently, there has been growing attention
on fairness considerations in recommender systems with more and more literature
on approaches to promote fairness in recommendation. However, the studies are
rather fragmented and lack a systematic organization, thus making it difficult
to penetrate for new researchers to the domain. This motivates us to provide a
systematic survey of existing works on fairness in recommendation. This survey
focuses on the foundations for fairness in recommendation literature. It first
presents a brief introduction about fairness in basic machine learning tasks
such as classification and ranking in order to provide a general overview of
fairness research, as well as introduce the more complex situations and
challenges that need to be considered when studying fairness in recommender
systems. After that, the survey will introduce fairness in recommendation with
a focus on the taxonomies of current fairness definitions, the typical
techniques for improving fairness, as well as the datasets for fairness studies
in recommendation. The survey also talks about the challenges and opportunities
in fairness research with the hope of promoting the fair recommendation
research area and beyond.
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