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Alleviating the cold-start problem by incorporating movies facebook pages

机译:通过合并电影facebook页面来缓解冷启动问题

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摘要

Recommender systems are generally known as predictive ecosystem which recommends an appropriate list of items that may imply their similar preference or interest. Nevertheless, most discussed issues in recommendation system research domain are the cold-start problem. In this paper we proposed a novel approach to address this problem by combining similarity values obtain from a movie "Facebook Pages". To achieve this, we first compute users' similarity according to the rating cast on our Movie Rating System. Then, we combined similarity value obtain from user's genre interest in "Like" information extracted from "Facebook Pages". Finally, all the similarity values are combined to produce a new user's similarity value. Our experiment results show that our approach is outperformed in cold-start problem compared to the benchmark algorithms. To evaluate whether our system is strong enough to recommend higher accuracy recommendation to users, we also conducted prediction coverage in this research work.
机译:推荐系统通常被称为预测生态系统,它会推荐可能暗示其相似偏好或兴趣的项目清单。尽管如此,推荐系统研究领域中讨论最多的问题是冷启动问题。在本文中,我们提出了一种新颖的方法,通过结合从电影“ Facebook页面”获得的相似性值来解决此问题。为此,我们首先根据电影分级系统上的分级来计算用户的相似度。然后,我们结合了从用户的体裁兴趣中获取的相似度值,这些兴趣来自从“ Facebook页面”提取的“喜欢”信息。最后,将所有相似度值组合在一起以产生新用户的相似度值。我们的实验结果表明,与基准算法相比,我们的方法在冷启动问题上的表现要好。为了评估我们的系统是否强大到可以向用户推荐更高准确性的建议,我们还在这项研究工作中进行了预测范围研究。

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