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Context-aware location recommendation by using a random walk-based approach

机译:通过使用基于随机游走的方法的上下文感知位置推荐

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The location-based social networks (LBSN) enable users to check in their current location and share it with other users. The accumulated check-in data can be employed for the benefit of users by providing personalized recommendations. In this paper, we propose a context-aware location recommendation system for LBSNs using a random walk approach. Our proposed approach considers the current context (i.e., current social relations, personal preferences and current location) of the user to provide personalized recommendations. We build a graph model of LBSNs for performing a random walk approach with restart. Random walk is performed to calculate the recommendation probabilities of the nodes. A list of locations are recommended to users after ordering the nodes according to the estimated probabilities. We compare our algorithm, CLoRW, with popularity-based, friend-based and expert-based baselines, user-based collaborative filtering approach and a similar work in the literature. According to experimental results, our algorithm outperforms these approaches in all of the test cases.
机译:基于位置的社交网络(LBSN)使用户可以签入其当前位置并与其他用户共享。通过提供个性化推荐,可以将累积的签入数据用于用户的利益。在本文中,我们提出了一种使用随机游走方法的LBSN上下文感知位置推荐系统。我们提出的方法考虑了用户的当前上下文(即当前的社会关系,个人喜好和当前位置)以提供个性化推荐。我们建立了一个LBSN的图形模型,用于执行带有重启的随机游走方法。执行随机游走以计算节点的推荐概率。根据估计的概率对节点进行排序后,建议用户使用位置列表。我们将我们的算法CLoRW与基于流行度,基于朋友和专家的基准,基于用户的协作过滤方法以及文献中的类似工作进行了比较。根据实验结果,我们的算法在所有测试案例中均优于这些方法。

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