Large-scale Geospatial Analytics: Problems, Challenges, and Opportunities

Tsz Nam Chan, Leong Hou U, Byron Choi, Jianliang Xu, R. Cheng
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引用次数: 1

Abstract

Geospatial analytics is an important field in many communities, including crime science, transportation science, epidemiology, ecology, and urban planning. However, with the rapid growth of big geospatial data, most of the commonly used geospatial analytic tools are not efficient (or even feasible) to support large-scale datasets. As such, domain experts have raised the concerns about the inefficiency issues for using these tools. In this tutorial, we aim to arouse the attention of database researchers for this important, emerging, database-related, and interdisciplinary topic, which consists of four parts. In the first part, we will discuss different problems and highlight the challenges for two types of geospatial analytic tools, which are (1) hotspot detection and (2) correlation analysis. In the second and third parts, we will specifically discuss two geospatial analytic tools, namely kernel density visualization (the representative hotspot detection method) and K-function (the representative correlation analysis method), respectively, and their variants. In the fourth part, we will highlight the future opportunities for this topic.
大规模地理空间分析:问题、挑战和机遇
地理空间分析在许多领域都是一个重要的领域,包括犯罪科学、交通科学、流行病学、生态学和城市规划。然而,随着地理空间大数据的快速增长,大多数常用的地理空间分析工具在支持大规模数据集方面效率低下(甚至是不可行的)。因此,领域专家已经提出了对使用这些工具的低效率问题的担忧。在本教程中,我们的目标是引起数据库研究人员对这个重要的、新兴的、与数据库相关的跨学科主题的关注,它由四个部分组成。在第一部分中,我们将讨论两类地理空间分析工具(1)热点检测和(2)相关分析)面临的不同问题和挑战。在第二部分和第三部分,我们将具体讨论核密度可视化(代表性热点检测方法)和k函数(代表性相关分析方法)这两种地理空间分析工具及其变体。在第四部分中,我们将重点介绍该主题的未来机会。
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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