With the urbanization and development of infrastructure, the community search over road networks has become increasingly important in many real applications such as urban/city planning, social study on local communities, and community recommendations by real estate agencies. In this paper, we propose a novel problem, namely top-k community similarity search (Top-kCS2) over road networks, which efficiently and effectively obtains k spatial communities that are the most similar to a given query community in road-network graphs. In order to efficiently and effectively tackle the Top-kCS2 problem, in this paper, we will design an effective similarity measure between spatial communities, and propose a framework for retrieving Top-kCS2 query answers, which integrates offline pre-processing and online computation phases. Moreover, we also consider a variant, namely continuous top-k community similarity search (CTop-kCS2), where the query community continuously moves along a query line segment. We develop an efficient algorithm to split query line segments into intervals, incrementally obtain similar candidate communities for each interval and define actual CTop-kCS2 query answers. Extensive experiments have been conducted on real and synthetic data sets to confirm the efficiency and effectiveness of our proposed Top-kCS2 and CTop-kCS2 approaches under various parameter setting
翻译:随着城市化和基础设施发展,社区对公路网络的搜索在许多实际应用中变得日益重要,如城市/城市规划、当地社区社会研究以及房地产机构提出的社区建议等,在本文件中,我们提出了一个新问题,即对公路网络进行上方社区类似搜索(Top-kCS2),高效和有效地获得与道路网络图中特定查询社区最相似的k空间社区。为了高效和有效地解决顶端KCS2问题,我们将在本文件中设计空间社区之间的有效类似措施,并提议一个重新获取顶端KCS2查询答案的框架,将离线前处理和在线计算阶段结合起来。此外,我们还考虑一个变式,即连续的顶端社区类似搜索(CTop-kCS2),让查询社区沿着一个查询线段不断移动。我们开发一种高效的算法,将查询线段分成一个间隔段,逐步获得类似的候选社区,并确定实际的CTOCS2查询答案。在实际和合成数据组下进行了广泛的实验,以确认我们拟议的顶端CS2系统的效率和参数。