Research on offline behavior similarity of consumers based on Spatio-temporal data set mining

Zhang Renping, Liu Ying, Rizwan Ali
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Abstract

The Spatio-temporal data set can be used in business research, For example, The user's geolocation check-in data (POI) in social media can be used to trace back the user's behavior track, however, the analysis of the similarity of LBSN users is not involved in the user's geographical location track. As a result, a density clustering method based on partition hierarchy and different neighborhood radius by users' geographical location is proposed to help explore similar measurement based on Spatio-temporal data set mining. The method observes the number of times a user visits each cluster region at different spatial location scales, and then calculates the similarity of users at each level by taking advantage of vector space model (VSM). Finally, users' similarity in Spatio-temporal(geospatial) behavior is obtained by superimposing user similarity values at different levels with different weights. The experimental results based on real user data of a large-scale social networking site in China show that the proposed method can effectively identify those users when they visit similar geographical locations.
基于时空数据集挖掘的消费者线下行为相似度研究
时空数据集可用于商业研究,例如社交媒体用户的地理位置签到数据(POI)可用于追溯用户的行为轨迹,但LBSN用户的相似度分析不涉及用户的地理位置轨迹。为此,提出了一种基于分区层次和用户地理位置不同邻域半径的密度聚类方法,以帮助探索基于时空数据集挖掘的相似度量。该方法观察用户在不同空间位置尺度上访问每个聚类区域的次数,然后利用向量空间模型(VSM)计算每个层次上用户的相似度。最后,将不同层次的用户相似度值以不同权重叠加,得到用户在时空(地理空间)行为上的相似度。基于中国某大型社交网站真实用户数据的实验结果表明,该方法可以有效识别访问相似地理位置的用户。
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