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Flow Mapping and Multivariate Visualization of Large Spatial Interaction Data

机译:大空间交互数据的流映射和多元可视化

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摘要

Spatial interactions (or flows), such as population migration and disease spread, naturally form a weighted location-to-location network (graph). Such geographically embedded networks (graphs) are usually very large. For example, the county-to-county migration data in the U.S. has thousands of counties and about a million migration paths. Moreover, many variables are associated with each flow, such as the number of migrants for different age groups, income levels, and occupations. It is a challenging task to visualize such data and discover network structures, multivariate relations, and their geographic patterns simultaneously. This paper addresses these challenges by developing an integrated interactive visualization framework that consists three coupled components: (1) a spatially constrained graph partitioning method that can construct a hierarchy of geographical regions (communities), where there are more flows or connections within regions than across regions; (2) a multivariate clustering and visualization method to detect and present multivariate patterns in the aggregated region-to-region flows; and (3) a highly interactive flow mapping component to map both flow and multivariate patterns in the geographic space, at different hierarchical levels. The proposed approach can process relatively large data sets and effectively discover and visualize major flow structures and multivariate relations at the same time. User interactions are supported to facilitate the understanding of both an overview and detailed patterns.
机译:空间相互作用(或流量),例如人口迁移和疾病传播,自然会形成一个加权的位置到位置网络(图)。这种地理上嵌入的网络(图形)通常非常大。例如,美国的县到县迁移数据有数千个县和大约一百万个迁移路径。而且,每个流程都与许多变量相关,例如不同年龄组的移民人数,收入水平和职业。可视化此类数据并同时发现网络结构,多元关系及其地理模式是一项艰巨的任务。本文通过开发一个集成的交互式可视化框架解决了这些挑战,该框架包括三个耦合的组件:(1)一种空间受限的图形分区方法,该方法可以构建地理区域(社区)的层次结构,其中区域内的流或连接比跨区域的多。地区; (2)多元聚类和可视化方法,用于检测并显示聚合的区域间流量中的多元模式; (3)高度互动的流量映射组件,可在地理空间中不同层次的层次上同时映射流量和多元模式。提出的方法可以处理相对较大的数据集,并同时有效地发现和可视化主要流程结构和多元关系。支持用户交互以促进对概述和详细模式的理解。

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