Using Machine Learning to Identify Associations between the Environment, Occurrence, and Outcomes of Songbird Displacements at Supplemental Feeders

The context and outcome of aggressive interactions between individuals has important fitness consequences. Displacements—an aggressive interaction wherein one individual is chased from a location by another—also have implications for social hierarchy formation and geographic distribution in songbird...

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Main Authors: Conner S. Philson, Tara A. Pelletier, Sarah L. Foltz, Jason E. Davis
Format: Article
Language:English
Published: MDPI AG 2022-09-01
Series:Birds
Subjects:
Online Access:https://www.mdpi.com/2673-6004/3/3/21
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author Conner S. Philson
Tara A. Pelletier
Sarah L. Foltz
Jason E. Davis
author_facet Conner S. Philson
Tara A. Pelletier
Sarah L. Foltz
Jason E. Davis
author_sort Conner S. Philson
collection DOAJ
description The context and outcome of aggressive interactions between individuals has important fitness consequences. Displacements—an aggressive interaction wherein one individual is chased from a location by another—also have implications for social hierarchy formation and geographic distribution in songbirds. Morphological correlates, like body size, and social correlates, such as dominance rank, have been shown to mediate displacements in songbirds. However, the role of the physical environment, namely temperature, humidity, and time of day, which may influence an individual’s energy needs and thus displacement motivation, has remained understudied. We monitored songbird feeding and displacement behaviors using computerized automated feeders. We observed asymmetric differences across species in displacement involvement. To identify the conditions of the social and physical environment that are associated with the occurrence and outcome of songbird displacements at supplemental feeders, we use the machine learning approach, random forest, which is a novel method to the fields of ornithology and animal behavior. From our random forest models, we found that the attributes of the physical environment (i.e., humidity and the time of day) are associated with the occurrence of a displacement event, whereas the attributes of the social environment (i.e., species of the displacer and displaced individuals) are associated with which species are involved. These results provide context to develop further observational and experimental hypotheses to tease apart the inner workings of these multifactorial behaviors on a larger scale and provide a proof of concept for our analytical methods in the study of avian behavior.
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spelling doaj.art-7ca7404e9cab4003b7333c0879b8633c2023-11-23T15:19:24ZengMDPI AGBirds2673-60042022-09-013330631910.3390/birds3030021Using Machine Learning to Identify Associations between the Environment, Occurrence, and Outcomes of Songbird Displacements at Supplemental FeedersConner S. Philson0Tara A. Pelletier1Sarah L. Foltz2Jason E. Davis3Department of Biology, Radford University, Radford, VA 24142, USADepartment of Biology, Radford University, Radford, VA 24142, USADepartment of Biology, Radford University, Radford, VA 24142, USADepartment of Biology, Radford University, Radford, VA 24142, USAThe context and outcome of aggressive interactions between individuals has important fitness consequences. Displacements—an aggressive interaction wherein one individual is chased from a location by another—also have implications for social hierarchy formation and geographic distribution in songbirds. Morphological correlates, like body size, and social correlates, such as dominance rank, have been shown to mediate displacements in songbirds. However, the role of the physical environment, namely temperature, humidity, and time of day, which may influence an individual’s energy needs and thus displacement motivation, has remained understudied. We monitored songbird feeding and displacement behaviors using computerized automated feeders. We observed asymmetric differences across species in displacement involvement. To identify the conditions of the social and physical environment that are associated with the occurrence and outcome of songbird displacements at supplemental feeders, we use the machine learning approach, random forest, which is a novel method to the fields of ornithology and animal behavior. From our random forest models, we found that the attributes of the physical environment (i.e., humidity and the time of day) are associated with the occurrence of a displacement event, whereas the attributes of the social environment (i.e., species of the displacer and displaced individuals) are associated with which species are involved. These results provide context to develop further observational and experimental hypotheses to tease apart the inner workings of these multifactorial behaviors on a larger scale and provide a proof of concept for our analytical methods in the study of avian behavior.https://www.mdpi.com/2673-6004/3/3/21aggressive behaviorbehavioral ecologycomputerized feederdisplacementsenvironment-behavior interactionsfeeding behavior
spellingShingle Conner S. Philson
Tara A. Pelletier
Sarah L. Foltz
Jason E. Davis
Using Machine Learning to Identify Associations between the Environment, Occurrence, and Outcomes of Songbird Displacements at Supplemental Feeders
Birds
aggressive behavior
behavioral ecology
computerized feeder
displacements
environment-behavior interactions
feeding behavior
title Using Machine Learning to Identify Associations between the Environment, Occurrence, and Outcomes of Songbird Displacements at Supplemental Feeders
title_full Using Machine Learning to Identify Associations between the Environment, Occurrence, and Outcomes of Songbird Displacements at Supplemental Feeders
title_fullStr Using Machine Learning to Identify Associations between the Environment, Occurrence, and Outcomes of Songbird Displacements at Supplemental Feeders
title_full_unstemmed Using Machine Learning to Identify Associations between the Environment, Occurrence, and Outcomes of Songbird Displacements at Supplemental Feeders
title_short Using Machine Learning to Identify Associations between the Environment, Occurrence, and Outcomes of Songbird Displacements at Supplemental Feeders
title_sort using machine learning to identify associations between the environment occurrence and outcomes of songbird displacements at supplemental feeders
topic aggressive behavior
behavioral ecology
computerized feeder
displacements
environment-behavior interactions
feeding behavior
url https://www.mdpi.com/2673-6004/3/3/21
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