Modeling User Mobility for Location Promotion in Location-based Social Networks

Wen-Yuan Zhu, Wen-Chih Peng, Ling-Jyh Chen, Kai Zheng, Xiaofang Zhou
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引用次数: 87

Abstract

With the explosion of smartphones and social network services, location-based social networks (LBSNs) are increasingly seen as tools for businesses (e.g., restaurants, hotels) to promote their products and services. In this paper, we investigate the key techniques that can help businesses promote their locations by advertising wisely through the underlying LBSNs. In order to maximize the benefit of location promotion, we formalize it as an influence maximization problem in an LBSN, i.e., given a target location and an LBSN, which a set of k users (called seeds) should be advertised initially such that they can successfully propagate and attract most other users to visit the target location. Existing studies have proposed different ways to calculate the information propagation probability, that is how likely a user may influence another, in the settings of static social network. However, it is more challenging to derive the propagation probability in an LBSN since it is heavily affected by the target location and the user mobility, both of which are dynamic and query dependent. This paper proposes two user mobility models, namely Gaussian-based and distance-based mobility models, to capture the check-in behavior of individual LBSN user, based on which location-aware propagation probabilities can be derived respectively. Extensive experiments based on two real LBSN datasets have demonstrated the superior effectiveness of our proposals than existing static models of propagation probabilities to truly reflect the information propagation in LBSNs.
基于位置的社交网络中位置推广的用户移动性建模
随着智能手机和社交网络服务的爆炸式增长,基于位置的社交网络(LBSNs)越来越被视为企业(如餐馆、酒店)推广其产品和服务的工具。在本文中,我们研究了一些关键技术,这些技术可以帮助企业通过潜在的LBSNs进行明智的广告宣传。为了最大化位置推广的效益,我们将其形式化为LBSN中的影响力最大化问题,即给定目标位置和LBSN,首先应该宣传一组k用户(称为种子),以便他们能够成功传播并吸引大多数其他用户访问目标位置。现有的研究已经提出了不同的方法来计算信息传播概率,即在静态社交网络的设置中,一个用户影响另一个用户的可能性。然而,由于LBSN中的传播概率受目标位置和用户移动性的严重影响,这两者都是动态的和依赖于查询的,因此推导LBSN中的传播概率更具挑战性。本文提出了基于高斯迁移模型和基于距离迁移模型来捕捉LBSN用户的签到行为,并在此基础上分别推导出位置感知传播概率。基于两个真实LBSN数据集的大量实验表明,我们的建议比现有的静态传播概率模型更有效,更真实地反映了LBSN中的信息传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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