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Personalizing recommendation diversity based on user personality

机译:基于用户个性化推荐多样性

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In recent years, diversity has attracted increasing attention in the field of recommender systems because of its ability of catching users’ various interests by providing a set of dissimilar items. There are few endeavors to personalize the recommendation diversity being tailored to individual users’ diversity needs. However, they mainly depend on users’ behavior history such as ratings to customize diversity, which has two limitations: (1) They neglect taking into account a user’s needs that are inherently caused by some personal factors such as personality; (2) they fail to work well for new users who have little behavior history. In order to address these issues, this paper proposes a generalized, dynamic personality-based greedy re-ranking approach to generating the recommendation list. On one hand, personality is used to estimate each user’s diversity preference. On the other hand, personality is leveraged to alleviate the cold-start problem of collaborative filtering recommendations. The experimental results demonstrate that our approach significantly outperforms related methods (including both non-diversity-oriented and diversity-oriented methods) in terms of metrics measuring recommendation accuracy and personalized diversity degree, especially in the cold-start setting.
机译:近年来,多样性通过在推荐系统中引起越来越多的关注,因为它能够通过提供一组不同的项目来吸引用户的各种兴趣。很少有工作可以个性化针对各个用户的多样性需求量身定制的推荐多样性。但是,它们主要取决于用户的行为历史记录,例如自定义多样性的等级,这有两个局限性:(1)他们忽略了某些人为因素(例如人格)固有地引起的用户需求; (2)对于行为记录很少的新用户,它们不能很好地工作。为了解决这些问题,本文提出了一种通用的,基于动态人格的贪婪重新排序方法来生成推荐列表。一方面,个性用于估计每个用户的多样性偏好。另一方面,利用个性来缓解协作筛选建议的冷启动问题。实验结果表明,我们的方法在衡量推荐准确性和个性化多样性程度的指标方面,尤其是在冷启动环境下,明显优于相关方法(包括非多样性方法和多样性方法)。

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