GeoSocialBound: an efficient framework for estimating social POI boundaries using spatio--textual information

Dung D. Vu, Hien To, Won-Yong Shin, C. Shahabi
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引用次数: 20

Abstract

In this paper, we present a novel framework for estimating social point-of-interest (POI) boundaries, also termed GeoSocialBound, utilizing spatio--textual information based on geo-tagged tweets. We first start by defining a social POI boundary as one small-scale cluster containing its POI center, geographically formed with a convex polygon. Motivated by an insightful observation with regard to estimation accuracy, we formulate a constrained optimization problem, in which we are interested in finding the radius of a circle such that a newly defined objective function is maximized. To solve this problem, we introduce an efficient optimal estimation algorithm whose runtime complexity is linear in the number of geo-tags in a dataset. In addition, we empirically evaluate the estimation performance of our GeoSocialBound algorithm for various environments and validate the complexity analysis. As a result, vital information on how to obtain real-world GeoSocialBounds with a high degree of accuracy is provided.
GeoSocialBound:一个使用空间文本信息估计社会POI边界的有效框架
在本文中,我们提出了一个新的框架来估计社会兴趣点(POI)边界,也称为GeoSocialBound,利用基于地理标记的推文的空间文本信息。我们首先将社会POI边界定义为一个包含其POI中心的小规模集群,在地理上由凸多边形形成。出于对估计精度的深刻观察,我们提出了一个约束优化问题,其中我们感兴趣的是找到一个圆的半径,从而使新定义的目标函数最大化。为了解决这一问题,我们引入了一种高效的最优估计算法,该算法的运行复杂度与数据集中地理标签的数量呈线性关系。此外,我们还通过经验评估了GeoSocialBound算法在各种环境下的估计性能,并验证了复杂性分析。因此,提供了关于如何以高精度获得真实世界GeoSocialBounds的重要信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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