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A personalized point-of-interest recommendation model via fusion of geo-social information

机译:通过融合地缘社会信息的个性化兴趣点推荐模型

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Recently, as location-based social networks (LBSNs) rapidly grow, general users utilize point-of-interest recommender systems to discover attractive locations. Most existing POI recommendation algorithms always employ the check-in data and rich contextual information (e. g., geographical information and users' social network information) of users to learn their preference on POIs. Unfortunately, these studies generally suffer from two major limitations: (1) when modeling geographical influence, users' personalized behavior differences are ignored; (2) when modeling the users' social influence, the implicit social influence is seldom exploited. In this paper, we propose a novel POI recommendation approach called GeoEISo. GeoEISo achieves three key goals in this work. (1) We develop a kernel estimation method with a selfadaptive kernel bandwidth to model the geographical influence between POIs. (2) We use the Gaussian radial basis kernel function based support vector regression (SVR) model to predict explicit trust values between users, and then devise a novel trust-based recommendation model to simultaneously incorporate both the explicit and implicit social trust information into the process of POI recommendation. (3) We develop a unified geo-social framework which combines users' preference on a POI with the geographical influence as well as social correlations. Experimental results on two real-world datasets collected from Foursquare show that GeoEISo provides significantly superior performances compared to other state-of-the-art POI recommendation models. (C) 2017 Elsevier B.V. All rights reserved.
机译:近来,随着基于位置的社交网络(LBSN)的迅速发展,普通用户利用兴趣点推荐系统来发现有吸引力的位置。大多数现有的POI推荐算法总是使用用户的签入数据和丰富的上下文信息(例如,地理信息和用户的社交网络信息)来学习他们对POI的偏好。不幸的是,这些研究通常受到两个主要限制:(1)在对地理影响建模时,用户的个性化行为差异被忽略; (2)在对用户的社会影响进行建模时,很少利用隐性的社会影响。在本文中,我们提出了一种新颖的POI推荐方法,称为GeoEISo。 GeoEISo实现了这项工作的三个关键目标。 (1)我们开发了一种具有自适应内核带宽的内核估计方法,以对POI之间的地理影响进行建模。 (2)我们使用基于高斯径向基核函数的支持向量回归(SVR)模型来预测用户之间的显式信任值,然后设计一种新颖的基于信任的推荐模型,以将显性和隐性社会信任信息同时纳入POI推荐过程。 (3)我们开发了一个统一的地缘社会框架,该框架将用户对POI的偏好与地理影响力和社会相关性结合在一起。从Foursquare收集的两个真实数据集上的实验结果表明,与其他最新的POI推荐模型相比,GeoEISo提供了显着优越的性能。 (C)2017 Elsevier B.V.保留所有权利。

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