计算机科学
城市化
核(代数)
社会经济地位
核密度估计
弹道
语义学(计算机科学)
地理
数据科学
统计
数学
人口
社会学
物理
人口学
组合数学
天文
估计员
经济
程序设计语言
经济增长
作者
Nicholas Jing Yuan,Yu Zheng,Xing Xie,Yingzi Wang,Kai Zheng,Hui Xiong
标识
DOI:10.1109/tkde.2014.2345405
摘要
The step of urbanization and modern civilization fosters different functional zones in a city, such as residential areas, business districts, and educational areas. In a metropolis, people commute between these functional zones every day to engage in different socioeconomic activities, e.g., working, shopping, and entertaining. In this paper, we propose a data-driven framework to discover functional zones in a city. Specifically, we introduce the concept of latent activity trajectory (LAT), which captures socioeconomic activities conducted by citizens at different locations in a chronological order. Later, we segment an urban area into disjointed regions according to major roads, such as highways and urban expressways. We have developed a topic-modeling-based approach to cluster the segmented regions into functional zones leveraging mobility and location semantics mined from LAT. Furthermore, we identify the intensity of each functional zone using Kernel Density Estimation. Extensive experiments are conducted with several urban scale datasets to show that the proposed framework offers a powerful ability to capture city dynamics and provides valuable calibrations to urban planners in terms of functional zones.
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