Due to the extensive growth of information available online, recommender systems play a more significant role in serving people's interests. Traditional recommender systems mostly use an accuracy-focused approach to produce recommendations. Today's research suggests that this single-dimension approach can lead the system to be biased against a series of items with certain attributes. Biased recommendations across groups of items can endanger the interests of item providers along with causing user dissatisfaction with the system. This study aims to manage a new type of intersectional bias regarding the geographical origin and popularity of items in the output of state-of-the-art collaborative filtering recommender algorithms. We introduce an algorithm called MFAIR, a multi-facet post-processing bias mitigation algorithm to alleviate these biases. Extensive experiments on two real-world datasets of movies and books, enriched with the items' continents of production, show that the proposed algorithm strikes a reasonable balance between accuracy and both types of the mentioned biases. According to the results, our proposed approach outperforms a well-known competitor with no or only a slight loss of efficiency.
翻译:由于在线信息的广泛增长,推荐人系统在为人民利益服务方面起着更重要的作用。传统推荐人系统大多使用以精确为重点的方法来提出建议。今天的研究表明,这种单一区分方法可能导致系统对一系列具有某些属性的项目产生偏向。跨项目组的偏差建议可能会危及项目提供者的利益,同时引起用户对系统的不满。这项研究旨在管理一种新型的交叉偏差,这种偏差涉及项目在最新合作过滤人算法产出中的地理来源和受欢迎程度。我们引入了一种叫做MFAIR的算法,这是一种多面制后处理偏差减法,以缓解这些偏差。关于两个真实世界的电影和书籍数据集的广泛实验,与物品的制作大陆相丰富,表明拟议的算法在准确性和上述两种偏差之间取得了合理的平衡。根据研究结果,我们提议的算法超越了众所周知的比较者,没有或者只是略微丧失了效率。