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High Order Profile Expansion to tackle the new user problem on recommender systems

机译:高阶配置文件扩展以解决推荐系统的新用户问题

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Collaborative Filtering algorithms provide users with recommendations based on their opinions, that is, on the ratings given by the user for some items. They are the most popular and widely implemented algorithms in Recommender Systems, especially in e-commerce, considering their good results. However, when the information is extremely sparse, independently of the domain nature, they do not present such good results. In particular, it is difficult to offer recommendations which are accurate enough to a user who has just arrived to a system or who has rated few items. This is the well-known new user problem, a type of cold-start. Profile Expansion techniques had been already presented as a method to alleviate this situation. These techniques increase the size of the user profile, by obtaining information about user tastes in distinct ways. Therefore, recommender algorithms have more information at their disposal, and results improve. In this paper, we present the High Order Profile Expansion techniques, which combine in different ways the Profile Expansion methods. The results show 110% improvement in precision over the algorithm without Profile Expansion, and 10% improvement over Profile Expansion techniques.
机译:协作过滤算法为用户提供了基于他们的意见的建议,即用户对某些项目给出的额定值。它们是考虑到其良好结果的推荐系统中最受欢迎和广泛实现的算法,特别是在电子商务中。但是,当信息极其稀疏时,独立于域自然,它们并不呈现如此良好的效果。特别是,很难提供足够准确的建议,这是刚刚到达系统或谁被评为少数物品的用户。这是众所周知的新用户问题,一种冷启动。简介扩展技术已经呈现为缓解这种情况的方法。这些技术通过以不同方式获取有关用户品味的信息来增加用户简档的大小。因此,推荐者算法有更多信息,而结果有所改善。在本文中,我们提出了高阶简介扩展技术,其以不同的方式结合了简介扩展方法。结果表明,在没有简档扩展的情况下,算法的精度提高了110%,并且通过概况扩展技术的提高10%。

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