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Scalable Processing of Location-Based Social Networking Queries

机译:基于位置的社交网络查询的可扩展处理

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Using GPS-enabled smart phones, social network services are enriched with location information which allows users to share geo-tagged contents with their friends. This so called location-based social network (LBSN) data has a dual spatial and graph nature. The growing scale and importance of LBSN data necessitate a platform which (i) has both spatial and graph capabilities, (ii) supports a wide range of queries, e.g., selection, structural, and aggregate queries, (iii) supports scalable distributed processing of large data volumes. In this paper, we propose such a platform, called Geo Social-GraphX, that segregates the LBSN data into several specific graphs capturing user-user, user-location, and location-location relationships, and enables a wide range of LBSN queries by proposing a comprehensive set of query primitives that can be composed into more advanced queries. We implement the platform based on GraphX, a map-reduce infrastructure for distributed graph computation. We further improve the query performance in several ways. For social-related data, we use vertex-centric messaging operators which better address the recursive nature of graph data than traditional two-stage map-reduce. For spatial-related data, we use effective spatial partitioning and indexing methods. Experiments on both synthetic and real LBSN datasets show that Geo Social-GraphX can process a variety of LBSN queries efficiently, scales on multicore architectures, and achieves much better performance than the state of the art competing framework, Spatial Hadoop.
机译:使用支持GPS的智能手机,社交网络服务将获得丰富的位置信息,该位置信息使用户可以与朋友共享带有地理标签的内容。这种所谓的基于位置的社交网络(LBSN)数据具有双重的空间和图形性质。 LBSN数据的规模和重要性不断增长,因此需要一个平台,该平台(i)同时具有空间和图形功能;(ii)支持广泛的查询,例如选择,结构和聚合查询;(iii)支持可扩展的分布式处理大数据量。在本文中,我们提出了一个名为Geo Social-GraphX的平台,该平台将LBSN数据分为几个特定的​​图形,这些图形捕获了用户-用户,用户-位置和位置-位置之间的关系,并通过提出建议实现了广泛的LBSN查询一组完整的查询原语,可以将它们组合成更高级的查询。我们实现了基于GraphX的平台,GraphX是用于分布式图形计算的map-reduce基础结构。我们通过几种方式进一步提高了查询性能。对于与社交相关的数据,我们使用以顶点为中心的消息传递运算符,该运算符比传统的两阶段映射简化方法更好地解决了图形数据的递归性质。对于与空间相关的数据,我们使用有效的空间分区和索引方法。对合成LBSN数据集和实际LBSN数据集进行的实验表明,Geo Social-GraphX可以高效地处理各种LBSN查询,可以在多核体系结构上扩展,并且比最新的竞争性框架Spatial Hadoop具有更好的性能。

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