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LsRec: Large-scale social recommendation with online update

机译:LSREC:具有在线更新的大规模社会建议

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摘要

With the ever-increasing scale and complexity of social network and online business, Recommender Systems (RS) have played crucial roles in information processing and filtering in various online applications, although suffering from such as data sparsity and low accuracy problems. Meanwhile, recent researches try to enhance the performance of RS through such social network and clustering algorithms, however, they may fail to achieve further improvement in large-scale online recommendation due to the serious information overload. In this article, a novel social recommendation approach with online update referred to as LsRec is proposed, which generally contains offline computation and online incremental update. More precisely, LsRec not only takes account of user's social relationship, but also clusters items according to the similarity degree, furthermore, LsRec performs recommendation in each generated cluster respectively. In practice, LsRec could be capable of exploiting user-level social influence, and capturing the intricate relationship between items. In addition, theoretical proof could provide convergence guarantee for the model. Specifically, with the appealing merit of flexible online update scenario, LsRec could yield high performance in large-scale online recommendation with low computational complexity. Extensive experimental analysis over four real world datasets demonstrate the effectiveness and efficiency of LsRec, which indicates that LsRec could significantly outperform state-of-the-art recommender approaches, especially in large-scale online recommendation. (C) 2020 Elsevier Ltd. All rights reserved.
机译:随着社交网络和在线业务的不断增长的规模和复杂性,推荐系统(RS)在各种在线应用程序中扮演了在信息处理和过滤中的关键作用,尽管遭受数据稀疏性和低精度问题。同时,最近的研究试图通过这种社交网络和聚类算法提高RS的性能,但是,由于严重的信息过载,它们可能无法在大规模的在线推荐中实现进一步的改进。在本文中,提出了一种具有称为LSREC的在线更新的新的社会推荐方法,通常包含离线计算和在线增量更新。更确切地说,LSREC不仅考虑了用户的社交关系,还要根据相似度的群集项目,此外,LSREC分别在每个生成的群集中执行推荐。在实践中,LSREC能够利用用户级社会影响力,并捕获物品之间的复杂关系。此外,理论证明可以为模型提供会聚保证。具体而言,随着灵活的在线更新方案的吸引人优势,LSREC可以在具有低计算复杂性的大规模在线推荐中产生高性能。四个现实世界数据集的广泛实验分析证明了LSREC的有效性和效率,这表明LSREC可以显着优于最先进的推荐方法,特别是在大型在线推荐中。 (c)2020 elestvier有限公司保留所有权利。

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