Exploring Multi-Scale Spatiotemporal Twitter User Mobility Patterns with a Visual-Analytics Approach

Understanding human mobility patterns is of great importance for urban planning, traffic management, and even marketing campaign. However, the capability of capturing detailed human movements with fine-grained spatial and temporal granularity is still limited. In this study, we extracted high-resolu...

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Main Authors: Junjun Yin, Zhenhong Du
Format: Article
Language:English
Published: MDPI AG 2016-10-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:http://www.mdpi.com/2220-9964/5/10/187
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spelling doaj-5b391767f01e449f8b4cd9b27127e4dc2020-11-24T23:16:19ZengMDPI AGISPRS International Journal of Geo-Information2220-99642016-10-0151018710.3390/ijgi5100187ijgi5100187Exploring Multi-Scale Spatiotemporal Twitter User Mobility Patterns with a Visual-Analytics ApproachJunjun Yin0Zhenhong Du1Department of Geography and Geographic Information Science, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USAInstitute of Geographic Information Science, School of Earth Sciences, Zhejiang University, Hangzhou 310028, ChinaUnderstanding human mobility patterns is of great importance for urban planning, traffic management, and even marketing campaign. However, the capability of capturing detailed human movements with fine-grained spatial and temporal granularity is still limited. In this study, we extracted high-resolution mobility data from a collection of over 1.3 billion geo-located Twitter messages. Regarding the concerns of infringement on individual privacy, such as the mobile phone call records with restricted access, the dataset is collected from publicly accessible Twitter data streams. In this paper, we employed a visual-analytics approach to studying multi-scale spatiotemporal Twitter user mobility patterns in the contiguous United States during the year 2014. Our approach included a scalable visual-analytics framework to deliver efficiency and scalability in filtering large volume of geo-located tweets, modeling and extracting Twitter user movements, generating space-time user trajectories, and summarizing multi-scale spatiotemporal user mobility patterns. We performed a set of statistical analysis to understand Twitter user mobility patterns across multi-level spatial scales and temporal ranges. In particular, Twitter user mobility patterns measured by the displacements and radius of gyrations of individuals revealed multi-scale or multi-modal Twitter user mobility patterns. By further studying such mobility patterns in different temporal ranges, we identified both consistency and seasonal fluctuations regarding the distance decay effects in the corresponding mobility patterns. At the same time, our approach provides a geo-visualization unit with an interactive 3D virtual globe web mapping interface for exploratory geo-visual analytics of the multi-level spatiotemporal Twitter user movements.http://www.mdpi.com/2220-9964/5/10/187Geo-located tweetsmobility patternsmulti-scale spatiotemporal analysisscalable visual-analytics framework
collection DOAJ
language English
format Article
sources DOAJ
author Junjun Yin
Zhenhong Du
spellingShingle Junjun Yin
Zhenhong Du
Exploring Multi-Scale Spatiotemporal Twitter User Mobility Patterns with a Visual-Analytics Approach
ISPRS International Journal of Geo-Information
Geo-located tweets
mobility patterns
multi-scale spatiotemporal analysis
scalable visual-analytics framework
author_facet Junjun Yin
Zhenhong Du
author_sort Junjun Yin
title Exploring Multi-Scale Spatiotemporal Twitter User Mobility Patterns with a Visual-Analytics Approach
title_short Exploring Multi-Scale Spatiotemporal Twitter User Mobility Patterns with a Visual-Analytics Approach
title_full Exploring Multi-Scale Spatiotemporal Twitter User Mobility Patterns with a Visual-Analytics Approach
title_fullStr Exploring Multi-Scale Spatiotemporal Twitter User Mobility Patterns with a Visual-Analytics Approach
title_full_unstemmed Exploring Multi-Scale Spatiotemporal Twitter User Mobility Patterns with a Visual-Analytics Approach
title_sort exploring multi-scale spatiotemporal twitter user mobility patterns with a visual-analytics approach
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2016-10-01
description Understanding human mobility patterns is of great importance for urban planning, traffic management, and even marketing campaign. However, the capability of capturing detailed human movements with fine-grained spatial and temporal granularity is still limited. In this study, we extracted high-resolution mobility data from a collection of over 1.3 billion geo-located Twitter messages. Regarding the concerns of infringement on individual privacy, such as the mobile phone call records with restricted access, the dataset is collected from publicly accessible Twitter data streams. In this paper, we employed a visual-analytics approach to studying multi-scale spatiotemporal Twitter user mobility patterns in the contiguous United States during the year 2014. Our approach included a scalable visual-analytics framework to deliver efficiency and scalability in filtering large volume of geo-located tweets, modeling and extracting Twitter user movements, generating space-time user trajectories, and summarizing multi-scale spatiotemporal user mobility patterns. We performed a set of statistical analysis to understand Twitter user mobility patterns across multi-level spatial scales and temporal ranges. In particular, Twitter user mobility patterns measured by the displacements and radius of gyrations of individuals revealed multi-scale or multi-modal Twitter user mobility patterns. By further studying such mobility patterns in different temporal ranges, we identified both consistency and seasonal fluctuations regarding the distance decay effects in the corresponding mobility patterns. At the same time, our approach provides a geo-visualization unit with an interactive 3D virtual globe web mapping interface for exploratory geo-visual analytics of the multi-level spatiotemporal Twitter user movements.
topic Geo-located tweets
mobility patterns
multi-scale spatiotemporal analysis
scalable visual-analytics framework
url http://www.mdpi.com/2220-9964/5/10/187
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AT zhenhongdu exploringmultiscalespatiotemporaltwitterusermobilitypatternswithavisualanalyticsapproach
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