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Integrating geographical and temporal influences into location recommendation: a method based on check-ins

机译:将地理和时间影响集成到位置建议书中:一种基于签到的方法

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摘要

In the online-to-offline (O2O) business model, location recommendation plays an important role and is an essential component of the location-based services. The check-in data, which contains both the geographical and temporal information, has been treated as an important data source for location recommendation. Location-based collaborative filtering is a popular technique for computing location similarities to arrive at the recommendation. In this research we analyze the geographical and temporal characteristics of the user's check-in activity and incorporate it for deriving recommendations using location-based collaborative filtering. To model the geographical proximity between the recommended location and the visited location, we first get the user's active regions using the multiple-center discovering algorithm; we then derive the probability of visiting the unvisited locations by using the power-law distribution on the distance. The geographical proximity is derived by multiplying the visiting probability and the check-in ratio of the active region. To consider temporal information, we propose the concept of time-aware location similarity, which splits the user check-ins into twenty-four different time slots in a day. To address the sparsity problem created by splitting check-in data, we propose a mechanism to measure the similarities between time slots and use these similarities to infer the empty ratings. The geographical proximity and time-aware location similarity are integrated to generate the location similarity. We perform the experiments to verify the effectiveness of the proposed algorithm. The experimental results show the superiority of our method compared with the benchmarks.
机译:在在线到脱机(O2O)业务模式中,位置推荐扮演重要作用,是基于位置的服务的重要组成部分。包含地理和时间信息的登记数据已被视为Location推荐的重要数据源。基于位置的协作滤波是一种流行的技术,用于计算定位相似之处到达推荐。在本研究中,我们分析了用户登记活动的地理和时间特征,并使用基于位置的协作滤波来实现推导推导。为了建模推荐位置与访问位置之间的地理位置,我们首先使用多中心发现算法获取用户的活动区域;然后,我们通过使用距离的幂律分布来获得访问未公开的位置的可能性。通过乘以活动区域的访问概率和检查比率来导出地理接近度。要考虑时间信息,我们提出了时间感知位置相似度的概念,该概念将用户办理登机手续分成一天的二十四个不同时隙。为了解决通过分离登记数据而创建的稀疏问题,我们提出了一种机制来测量时隙之间的相似性并使用这些相似性来推断空额定值。地理接近度和时间感知位置相似度集成以生成位置相似性。我们执行实验以验证所提出的算法的有效性。实验结果表明,与基准相比,我们的方法的优势。

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