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Investigating the impact of recommender systems on user-based and item-based popularity bias

机译:调查推荐系统对基于用户和基于项目的流行偏见的影响

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摘要

Recommender Systems are decision support tools that adopt advanced algorithms in order to help users to find less-explored items that can be interesting for them. While recommender systems may offer a range of attractive benefits, they may also intensify undesired effects, such as the Popularity Bias, where a few popular users/items get more popular and many unpopular users/items get more unpopular. In this paper, we study the impact of different recommender algorithms on the popularity bias in different application domains and recommendation scenarios. We have designed a comprehensive evaluation methodology by considering two different recommendation scenarios, i.e., the user-based scenario (e.g., recommending users to users to follow), and the item-based scenario (e.g., recommending items to users to consume). We have used two large datasets, Twitter and Movielens, and compared a wide range of classical and modern recommender algorithms by considering a diverse range of metrics, such as PR-AUC, RCE, Gini index, and Entropy Score. The results have shown a substantial difference between different scenarios and different recommendation domains. According to our observations, while the recommendation of users to users may increase the popularity bias in the system, the recommendation of items to users may indeed decrease it. Moreover, while we have measured a different level of popularity bias in different languages (i.e., English, Spanish, Portuguese, and Japaneses), the above-noted phenomena has been consistently observed in all of these languages.
机译:推荐系统是采用高级算法的决策支持工具,以帮助用户找到可能对其有趣的较少探索的项目。虽然推荐系统可能提供一系列有吸引力的好处,但它们也可能加剧了不期望的效果,例如普遍偏差,其中一些流行的用户/物品获得更多流行,许多不受欢迎的用户/物品更加不受欢迎。在本文中,我们研究了不同推荐算法对不同应用域中的普及偏差和推荐方案的影响。我们通过考虑了两个不同的推荐方案,即基于用户的方案(例如,将用户推荐给用户遵循),以及基于项目的场景(例如,将项目推荐给用户来消费的项目)来设计了全面的评估方法。我们使用了两个大型数据集,Twitter和Movielens,并通过考虑不同的指标,例如PR-AUC,RCE,GINI指数和熵分数来比较各种古典和现代推荐算法。结果显示了不同场景和不同推荐域之间的显着差异。根据我们的观察,虽然用户对用户的推荐可能会增加系统中的普及偏见,但对用户的推荐可能确实会降低。此外,虽然我们已经测量了不同语言的不同程度的普及偏见(即,英语,西班牙语,葡萄牙语和日本),但在所有这些语言中一直观察到上述现象。

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