通过协同过滤的Facebook用户好友推荐引擎

Mohammed Sanad Alshammari, Aadil Alshammari
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引用次数: 2

摘要

今天的互联网包含了大量的信息,这使得推荐引擎很难产生令人满意的输出。这种巨大的不相关数据流增加了它的稀疏性,这使得推荐系统的工作更具挑战性。Facebook的主要推荐任务是基于“朋友的朋友也是朋友”这一理念来推荐朋友关系;然而,使用这种方法的大多数建议几乎没有交互。我们提出了一个使用矩阵分解技术的模型,利用Facebook用户之间的互动,并生成一个很可能是互动的友谊联系列表。我们使用真实的数据集测试了我们的模型,其中包含了用户之间超过3300万次的交互。所提出的算法的准确性是用预测的可能朋友之间的互动次数与实际值的错误率来衡量的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Friend Recommendation Engine for Facebook Users via Collaborative Filtering
Today’s internet consists of an abundant amount of information that makes it difficult for recommendation engines to produce satisfying outputs. This huge stream of unrelated data increases its sparsity, which makes the recommender system’s job more challenging. Facebook’s main recommendation task is to recommend a friendship connection based on the idea that a friend of a friend is also a friend; however, the majority of recommendations using this approach lead to little to no interaction. We propose a model using the matrix factorization technique that leverages interactions between Facebook users and generates a list of friendship connections that are very likely to be interactive. We tested our model using a real dataset with over 33 million interactions between users. The accuracy of the proposed algorithm is measured using the error rate of the predicted number of interactions between possible friends in comparison to the actual values.
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