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Shaping City Neighborhoods Leveraging Crowd Sensors

机译:利用人群感应器塑造城市社区

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Location-based social networks (LBSN) are capturing large amount of data related to whereabouts of their users. This has become a social phenomenon, that is changing the normal communication means and it opens new research perspectives on how to compute descriptive models out of this collection of geo-spatial data. In this paper, we propose a methodology for clustering location-based information in order to provide first glance summaries of geographic areas. The summaries are a composition of fingerprints, each being a cluster, generated by a new subspace clustering algorithm, named GEoSusau, that is proposed in this paper. The algorithm is parameter-less: it automatically recognizes areas with homogeneous density of similar points of interest and provides clusters with a rich characterization in terms of the representative categories. We measure the validity of the generated clusters using both a qualitative and a quantitative evaluation. In the former, we benchmark the results of our methodology over an existing gold standard, and we compare the achieved results against two baselines. We then further validate the generated clusters using a quantitative analysis, over the same gold standard and a new geographic extent, using statistical validation measures. Results of the qualitative and quantitative experiments show the robustness of our approach in creating geographic clusters which are significant both for humans (holding a F-measure of 88.98% over the gold standard) and from a statistical point of view. (C) 2016 Elsevier Ltd. All rights reserved.
机译:基于位置的社交网络(LBSN)正在捕获与其用户的下落有关的大量数据。这已成为一种社会现象,正在改变正常的交流手段,并且为如何从地理空间数据集合中计算描述性模型开辟了新的研究视角。在本文中,我们提出了一种基于位置的信息进行聚类的方法,以提供地理区域的第一眼摘要。摘要是指纹的组成,每个指纹都是一个簇,由本文提出的一种新的子空间聚类算法GEoSusau生成。该算法无参数:自动识别具有相似密度的相似兴趣点的区域,并根据代表类别为聚类提供丰富的特征。我们使用定性和定量评估来衡量所生成集群的有效性。在前者中,我们以现有的金标准为基准对方法论的结果进行了基准测试,并将获得的结果与两个基准进行比较。然后,我们使用统计验证方法,在相同的金标准和新的地理范围内,使用定量分析进一步验证生成的群集。定性和定量实验的结果表明,我们的方法在创建对人类都具有重大意义的地理集群(从黄金标准中获取F值达88.98%的重要性)以及从统计角度来看都很稳健。 (C)2016 Elsevier Ltd.保留所有权利。

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