Exposing factors influencing Korean leisure life satisfaction through machine learning techniques

Abstract This study examines factors influencing leisure life satisfaction (LLS) through machine learning techniques based on the data from the 2019 National Leisure Activity Survey in Korea. The results show that using machine learning techniques in identifying LLS influencing factors improves pred...

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Main Authors: Yong-Kwan Lee, Boohyun Kim, Jinheum Kim
Format: Article
Language:English
Published: Springer 2024-11-01
Series:Discover Artificial Intelligence
Subjects:
Online Access:https://doi.org/10.1007/s44163-024-00205-5
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author Yong-Kwan Lee
Boohyun Kim
Jinheum Kim
author_facet Yong-Kwan Lee
Boohyun Kim
Jinheum Kim
author_sort Yong-Kwan Lee
collection DOAJ
description Abstract This study examines factors influencing leisure life satisfaction (LLS) through machine learning techniques based on the data from the 2019 National Leisure Activity Survey in Korea. The results show that using machine learning techniques in identifying LLS influencing factors improves predictive power and helps detect effective leisure interventions. We also provide insights into the factors influencing LLS by standardizing activity measures based on leisure type and examining differences in resource accessibility and experiences across groups. The findings suggest that a diverse and balanced leisure repertoire is associated with greater levels of LLS, particularly in active leisure and social activities. However, the relationship between the repertoire of passive leisure activities and LLS is negative, suggesting that the optimal point for leisure activities lies found between various leisure experiences and limited resources. Leisure resource availability, such as expenditure, time, facilities, and interpersonal factors, may affect LLS, but varies by age. The results provide new insights and more accurate models of the factors influencing LLS and their complex relationships.
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institution Kabale University
issn 2731-0809
language English
publishDate 2024-11-01
publisher Springer
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series Discover Artificial Intelligence
spelling doaj-art-66cdfad18af14edeaa2f629eec83537c2024-11-24T12:35:30ZengSpringerDiscover Artificial Intelligence2731-08092024-11-014111510.1007/s44163-024-00205-5Exposing factors influencing Korean leisure life satisfaction through machine learning techniquesYong-Kwan Lee0Boohyun Kim1Jinheum Kim2Korea Culture & Tourism InstituteDepartment of Data Science, University of SuwonDepartment of Applied Statistics, University of SuwonAbstract This study examines factors influencing leisure life satisfaction (LLS) through machine learning techniques based on the data from the 2019 National Leisure Activity Survey in Korea. The results show that using machine learning techniques in identifying LLS influencing factors improves predictive power and helps detect effective leisure interventions. We also provide insights into the factors influencing LLS by standardizing activity measures based on leisure type and examining differences in resource accessibility and experiences across groups. The findings suggest that a diverse and balanced leisure repertoire is associated with greater levels of LLS, particularly in active leisure and social activities. However, the relationship between the repertoire of passive leisure activities and LLS is negative, suggesting that the optimal point for leisure activities lies found between various leisure experiences and limited resources. Leisure resource availability, such as expenditure, time, facilities, and interpersonal factors, may affect LLS, but varies by age. The results provide new insights and more accurate models of the factors influencing LLS and their complex relationships.https://doi.org/10.1007/s44163-024-00205-5Leisure repertoireResource availabilityLeisure experienceLeisure life satisfactionMachine learning techniques
spellingShingle Yong-Kwan Lee
Boohyun Kim
Jinheum Kim
Exposing factors influencing Korean leisure life satisfaction through machine learning techniques
Discover Artificial Intelligence
Leisure repertoire
Resource availability
Leisure experience
Leisure life satisfaction
Machine learning techniques
title Exposing factors influencing Korean leisure life satisfaction through machine learning techniques
title_full Exposing factors influencing Korean leisure life satisfaction through machine learning techniques
title_fullStr Exposing factors influencing Korean leisure life satisfaction through machine learning techniques
title_full_unstemmed Exposing factors influencing Korean leisure life satisfaction through machine learning techniques
title_short Exposing factors influencing Korean leisure life satisfaction through machine learning techniques
title_sort exposing factors influencing korean leisure life satisfaction through machine learning techniques
topic Leisure repertoire
Resource availability
Leisure experience
Leisure life satisfaction
Machine learning techniques
url https://doi.org/10.1007/s44163-024-00205-5
work_keys_str_mv AT yongkwanlee exposingfactorsinfluencingkoreanleisurelifesatisfactionthroughmachinelearningtechniques
AT boohyunkim exposingfactorsinfluencingkoreanleisurelifesatisfactionthroughmachinelearningtechniques
AT jinheumkim exposingfactorsinfluencingkoreanleisurelifesatisfactionthroughmachinelearningtechniques