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Towards generating scalable personalized recommendations: Integrating social trust, social bias, and geo-spatial clustering

机译:生成可扩展个性化建议:整合社会信任,社会偏见和地理空间聚类

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With the advent of Web 2.0, recommender systems have become a viable means to harness relevant information online. In the past decades, extensive research have been conducted in the field of recommendations - model-based collaborative techniques being the most favored ones. Recently, a new paradigm of trust-based recommendation approach has emerged wherein structural features from social network resulted in an improved efficacy of the algorithms. However, majority of these approaches assume that users' ratings are impacted by all his social connections in friendship network and completely ignore their preferential similarity, which is essential for personalized recommendations. Herein, we address this pivotal issue and propose a two-stage clustering based matrix-factorization algorithm, 'Cluster REfinement on Preference Embedded MF (CREPE MF)' using a subgraph of social network that integrates preferential similarity score. Also, an immense surge in mobile device usage has been observed in recent times, thereby paving the way for tracking users' locations en-route to physical entity recommendations. As users' locations are geo-spatially co-located, we extend CREPE MF to Geographical CREPE MF (gCREPE MF) by incorporating geo-spatial influence. These two proposed algorithms have been systematically evaluated with state-of-the-art algorithms in terms of prediction accuracy and runtime complexity using two real-world data sets, namely Yelp and Gowalla. Gratifyingly, our approach CREPE MF outperforms the state-of-the-art algorithms; depending on the underlying data sets it achieves an improvement of 6.50% to 17.93% in accuracy and 11.67% to 74.23% in runtime. Extended model gCREPE MF further achieves 18.06% to 83.44% reduction in runtime without compromising on accuracy.
机译:随着Web 2.0的出现,推荐系统已成为在线利用相关信息的可行方法。在过去的几十年中,在建议 - 基于模型的协作技巧领域进行了广泛的研究是最有利的。最近,已经出现了一种基于信任的推荐方法的新范式,其中来自社交网络的结构特征导致了算法的提高。然而,这些方法中的大多数人认为,用户的评级受到友谊网络中所有社交联系的影响,并且完全忽略了他们的优惠相似度,这对于个性化建议至关重要。这里,我们解决了这种关键问题,并提出了一种基于两阶段聚类的基于矩阵分解算法,使用社交网络的子图对优先相似度分数的子图来提出了一种基于群体的基于矩阵分解算法,“群集嵌入式MF(Crepe MF)”。此外,近来已经观察到移动设备使用的巨大浪涌,从而铺平了跟踪用户的位置到物理实体推荐的方式。随着用户的位置是地理空间共同定位的,我们通过结合地质空间影响将Crepe MF扩展到地理绉纱MF(GCREPE MF)。在使用两个真实数据集的预测准确性和运行时复杂性方面,已经通过最新的算法系统地评估了这两个算法,即Yelp和Gowalla。我们的方法绉纱MF优于最先进的算法;根据底层数据集,它在准确性上提高了6.50%至17.93%,运行时的11.67%至74.23%。扩展模型GCRepe MF进一步实现了运行时的减少18.06%至83.44%,而不会损害准确性。

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