Space-Time Hierarchical Clustering for Identifying Clusters in Spatiotemporal Point Data

Finding clusters of events is an important task in many spatial analyses. Both confirmatory and exploratory methods exist to accomplish this. Traditional statistical techniques are viewed as confirmatory, or observational, in that researchers are confirming an a priori hypothesis. These methods ofte...

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Main Authors: David S. Lamb, Joni Downs, Steven Reader
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:https://www.mdpi.com/2220-9964/9/2/85
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spelling doaj-1ad27cdff4394db18159d8a62a80ec3d2020-11-25T02:20:43ZengMDPI AGISPRS International Journal of Geo-Information2220-99642020-02-01928510.3390/ijgi9020085ijgi9020085Space-Time Hierarchical Clustering for Identifying Clusters in Spatiotemporal Point DataDavid S. Lamb0Joni Downs1Steven Reader2Measurement and Research, Department of Educational and Psychological Studies, College of Education, University of South Florida, 4202 E Fowler Ave, Tampa, FL 33620, USASchool of Geosciences, University of South Florida, 4202 E Fowler Ave, Tampa, FL 33620, USASchool of Geosciences, University of South Florida, 4202 E Fowler Ave, Tampa, FL 33620, USAFinding clusters of events is an important task in many spatial analyses. Both confirmatory and exploratory methods exist to accomplish this. Traditional statistical techniques are viewed as confirmatory, or observational, in that researchers are confirming an a priori hypothesis. These methods often fail when applied to newer types of data like moving object data and big data. Moving object data incorporates at least three parts: location, time, and attributes. This paper proposes an improved space-time clustering approach that relies on agglomerative hierarchical clustering to identify groupings in movement data. The approach, i.e., space−time hierarchical clustering, incorporates location, time, and attribute information to identify the groups across a nested structure reflective of a hierarchical interpretation of scale. Simulations are used to understand the effects of different parameters, and to compare against existing clustering methodologies. The approach successfully improves on traditional approaches by allowing flexibility to understand both the spatial and temporal components when applied to data. The method is applied to animal tracking data to identify clusters, or hotspots, of activity within the animal’s home range.https://www.mdpi.com/2220-9964/9/2/85spatiotemporalclusteringtrajectories
collection DOAJ
language English
format Article
sources DOAJ
author David S. Lamb
Joni Downs
Steven Reader
spellingShingle David S. Lamb
Joni Downs
Steven Reader
Space-Time Hierarchical Clustering for Identifying Clusters in Spatiotemporal Point Data
ISPRS International Journal of Geo-Information
spatiotemporal
clustering
trajectories
author_facet David S. Lamb
Joni Downs
Steven Reader
author_sort David S. Lamb
title Space-Time Hierarchical Clustering for Identifying Clusters in Spatiotemporal Point Data
title_short Space-Time Hierarchical Clustering for Identifying Clusters in Spatiotemporal Point Data
title_full Space-Time Hierarchical Clustering for Identifying Clusters in Spatiotemporal Point Data
title_fullStr Space-Time Hierarchical Clustering for Identifying Clusters in Spatiotemporal Point Data
title_full_unstemmed Space-Time Hierarchical Clustering for Identifying Clusters in Spatiotemporal Point Data
title_sort space-time hierarchical clustering for identifying clusters in spatiotemporal point data
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2020-02-01
description Finding clusters of events is an important task in many spatial analyses. Both confirmatory and exploratory methods exist to accomplish this. Traditional statistical techniques are viewed as confirmatory, or observational, in that researchers are confirming an a priori hypothesis. These methods often fail when applied to newer types of data like moving object data and big data. Moving object data incorporates at least three parts: location, time, and attributes. This paper proposes an improved space-time clustering approach that relies on agglomerative hierarchical clustering to identify groupings in movement data. The approach, i.e., space−time hierarchical clustering, incorporates location, time, and attribute information to identify the groups across a nested structure reflective of a hierarchical interpretation of scale. Simulations are used to understand the effects of different parameters, and to compare against existing clustering methodologies. The approach successfully improves on traditional approaches by allowing flexibility to understand both the spatial and temporal components when applied to data. The method is applied to animal tracking data to identify clusters, or hotspots, of activity within the animal’s home range.
topic spatiotemporal
clustering
trajectories
url https://www.mdpi.com/2220-9964/9/2/85
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