LORE:利用位置推荐的顺序影响

Jiadong Zhang, Chi-Yin Chow, Yanhua Li
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引用次数: 246

摘要

提供位置推荐成为基于位置的社交网络(LBSNs)的一个重要特性,因为它可以帮助用户探索新的地点,并使LBSNs更受用户欢迎。在LBSNs中,地理影响和社会影响在位置推荐中被大量使用,这是基于地理位置的邻近性会显著影响用户的签到行为以及社交好友通常有共同的兴趣。虽然人类的运动表现出顺序模式,但目前大多数关于位置推荐的研究并没有考虑位置对用户签到行为的任何顺序影响。在本文中,我们提出了一种称为LORE的新方法来利用顺序影响对位置推荐的影响。首先,LORE从位置序列中增量挖掘序列模式,并将序列模式表示为动态位置-位置转换图(L2TG)。然后,LORE利用L2TG通过加性马尔可夫链(AMC)预测用户访问某个位置的概率。最后,LORE将顺序影响、地理影响和社会影响融合成一个统一的推荐框架;特别是,地理影响建模为二维签到概率分布,而不是现有作品中的一维距离概率分布。我们使用从Foursquare和Gowalla收集的两个大规模真实数据集对LORE进行了全面的性能评估。实验结果表明,与其他最先进的推荐技术相比,LORE实现了明显更好的位置推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LORE: exploiting sequential influence for location recommendations
Providing location recommendations becomes an important feature for location-based social networks (LBSNs), since it helps users explore new places and makes LBSNs more prevalent to users. In LBSNs, geographical influence and social influence have been intensively used in location recommendations based on the facts that geographical proximity of locations significantly affects users' check-in behaviors and social friends often have common interests. Although human movement exhibits sequential patterns, most current studies on location recommendations do not consider any sequential influence of locations on users' check-in behaviors. In this paper, we propose a new approach called LORE to exploit sequential influence on location recommendations. First, LORE incrementally mines sequential patterns from location sequences and represents the sequential patterns as a dynamic Location-Location Transition Graph (L2TG). LORE then predicts the probability of a user visiting a location by Additive Markov Chain (AMC) with L2TG. Finally, LORE fuses sequential influence with geographical influence and social influence into a unified recommendation framework; in particular the geographical influence is modeled as two-dimensional check-in probability distributions rather than one-dimensional distance probability distributions in existing works. We conduct a comprehensive performance evaluation for LORE using two large-scale real data sets collected from Foursquare and Gowalla. Experimental results show that LORE achieves significantly superior location recommendations compared to other state-of-the-art recommendation techniques.
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