Dynamic social networks based on movement
Network modeling techniques provide a means for quantifying social structure in populations of individuals. Data used to define social connectivity are often expensive to collect and based on case-specific, ad hoc criteria. Moreover, in applications involving animal social networks, collection of th...
Published in: | The Annals of Applied Statistics |
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Main Authors: | , , , , , |
Format: | Text |
Language: | English |
Published: |
The Institute of Mathematical Statistics
2016
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Subjects: | |
Online Access: | http://projecteuclid.org/euclid.aoas/1483606856 https://doi.org/10.1214/16-AOAS970 |
_version_ | 1821570748452438016 |
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author | Scharf, Henry R. Hooten, Mevin B. Fosdick, Bailey K. Johnson, Devin S. London, Josh M. Durban, John W. |
author_facet | Scharf, Henry R. Hooten, Mevin B. Fosdick, Bailey K. Johnson, Devin S. London, Josh M. Durban, John W. |
author_sort | Scharf, Henry R. |
collection | Project Euclid (Cornell University Library) |
container_issue | 4 |
container_title | The Annals of Applied Statistics |
container_volume | 10 |
description | Network modeling techniques provide a means for quantifying social structure in populations of individuals. Data used to define social connectivity are often expensive to collect and based on case-specific, ad hoc criteria. Moreover, in applications involving animal social networks, collection of these data is often opportunistic and can be invasive. Frequently, the social network of interest for a given population is closely related to the way individuals move. Thus, telemetry data, which are minimally invasive and relatively inexpensive to collect, present an alternative source of information. We develop a framework for using telemetry data to infer social relationships among animals. To achieve this, we propose a Bayesian hierarchical model with an underlying dynamic social network controlling movement of individuals via two mechanisms: an attractive effect and an aligning effect. We demonstrate the model and its ability to accurately identify complex social behavior in simulation, and apply our model to telemetry data arising from killer whales. Using auxiliary information about the study population, we investigate model validity and find the inferred dynamic social network is consistent with killer whale ecology and expert knowledge. |
format | Text |
genre | Killer Whale Orca Orcinus orca Killer whale |
genre_facet | Killer Whale Orca Orcinus orca Killer whale |
id | ftculeuclid:oai:CULeuclid:euclid.aoas/1483606856 |
institution | Open Polar |
language | English |
op_collection_id | ftculeuclid |
op_doi | https://doi.org/10.1214/16-AOAS970 |
op_relation | 1932-6157 1941-7330 |
op_rights | Copyright 2016 Institute of Mathematical Statistics |
publishDate | 2016 |
publisher | The Institute of Mathematical Statistics |
record_format | openpolar |
spelling | ftculeuclid:oai:CULeuclid:euclid.aoas/1483606856 2025-01-16T22:53:54+00:00 Dynamic social networks based on movement Scharf, Henry R. Hooten, Mevin B. Fosdick, Bailey K. Johnson, Devin S. London, Josh M. Durban, John W. 2016-12 application/pdf http://projecteuclid.org/euclid.aoas/1483606856 https://doi.org/10.1214/16-AOAS970 en eng The Institute of Mathematical Statistics 1932-6157 1941-7330 Copyright 2016 Institute of Mathematical Statistics Dynamic social network animal movement Orcinus orca hidden Markov model Gaussian Markov random field Text 2016 ftculeuclid https://doi.org/10.1214/16-AOAS970 2018-10-06T12:58:09Z Network modeling techniques provide a means for quantifying social structure in populations of individuals. Data used to define social connectivity are often expensive to collect and based on case-specific, ad hoc criteria. Moreover, in applications involving animal social networks, collection of these data is often opportunistic and can be invasive. Frequently, the social network of interest for a given population is closely related to the way individuals move. Thus, telemetry data, which are minimally invasive and relatively inexpensive to collect, present an alternative source of information. We develop a framework for using telemetry data to infer social relationships among animals. To achieve this, we propose a Bayesian hierarchical model with an underlying dynamic social network controlling movement of individuals via two mechanisms: an attractive effect and an aligning effect. We demonstrate the model and its ability to accurately identify complex social behavior in simulation, and apply our model to telemetry data arising from killer whales. Using auxiliary information about the study population, we investigate model validity and find the inferred dynamic social network is consistent with killer whale ecology and expert knowledge. Text Killer Whale Orca Orcinus orca Killer whale Project Euclid (Cornell University Library) The Annals of Applied Statistics 10 4 |
spellingShingle | Dynamic social network animal movement Orcinus orca hidden Markov model Gaussian Markov random field Scharf, Henry R. Hooten, Mevin B. Fosdick, Bailey K. Johnson, Devin S. London, Josh M. Durban, John W. Dynamic social networks based on movement |
title | Dynamic social networks based on movement |
title_full | Dynamic social networks based on movement |
title_fullStr | Dynamic social networks based on movement |
title_full_unstemmed | Dynamic social networks based on movement |
title_short | Dynamic social networks based on movement |
title_sort | dynamic social networks based on movement |
topic | Dynamic social network animal movement Orcinus orca hidden Markov model Gaussian Markov random field |
topic_facet | Dynamic social network animal movement Orcinus orca hidden Markov model Gaussian Markov random field |
url | http://projecteuclid.org/euclid.aoas/1483606856 https://doi.org/10.1214/16-AOAS970 |