Exploring user-generated content motivations: A systematic review of theoretical perspectives and empirical gaps in online learning

Technological advancements, digital transformation, and the increasing prominence of web-based platforms have significantly expanded the pool of online content producers, particularly within the User-Generated Content (UGC) model. This study comprehensively reviews the literature on UGC- generative...

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Main Authors: Yaoyao Zhang, Christina Ioanna Pappa, Daniel Pittich
Format: Article
Language:English
Published: Elsevier 2024-12-01
Series:Computers and Education Open
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Online Access:http://www.sciencedirect.com/science/article/pii/S2666557324000752
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author Yaoyao Zhang
Christina Ioanna Pappa
Daniel Pittich
author_facet Yaoyao Zhang
Christina Ioanna Pappa
Daniel Pittich
author_sort Yaoyao Zhang
collection DOAJ
description Technological advancements, digital transformation, and the increasing prominence of web-based platforms have significantly expanded the pool of online content producers, particularly within the User-Generated Content (UGC) model. This study comprehensively reviews the literature on UGC- generative motivations published from January 2005 to December 2022. Using the Web of Science (WoS) and China National Knowledge Infrastructure (CNKI) databases, we updated retrieving English and Chinese literature in June and November 2024, respectively. We screened the identified studies based on specific inclusion and exclusion criteria, resulting in 63 and another 3 primary studies. These studies were analyzed to extract 13 distinct UGC-generative motivations, 46 motivation influence factors, and 22 most empirically supported theoretical perspectives. The relationship between motivations and motivation influence factors was classified into intrinsic, extrinsic, personal, and technical levels. Our findings indicate a notable gap in empirical research regarding UGC generation from the perspectives of knowledge ecosystems and cognitive surplus, particularly in the context of Technical and Vocational Education and Training (TVET) online learning. The study underscores the importance of leveraging cognitive surplus to enhance the UGC knowledge ecosystem, specifically recommending targeted strategies for educators and platform designers to motivate TVET teachers to contribute to UGC effectively.
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spelling doaj-art-b3fcf8b481d6481c91df27e836cbefa32025-08-20T01:54:53ZengElsevierComputers and Education Open2666-55732024-12-01710023510.1016/j.caeo.2024.100235Exploring user-generated content motivations: A systematic review of theoretical perspectives and empirical gaps in online learningYaoyao Zhang0Christina Ioanna Pappa1Daniel Pittich2Corresponding author.; Technology Didactic, Department of Educational Science, School of Social Sciences and Technology, Technical University of Munich (TUM), Arcisstraße 21, Munich 80333, GermanyTechnology Didactic, Department of Educational Science, School of Social Sciences and Technology, Technical University of Munich (TUM), Arcisstraße 21, Munich 80333, GermanyTechnology Didactic, Department of Educational Science, School of Social Sciences and Technology, Technical University of Munich (TUM), Arcisstraße 21, Munich 80333, GermanyTechnological advancements, digital transformation, and the increasing prominence of web-based platforms have significantly expanded the pool of online content producers, particularly within the User-Generated Content (UGC) model. This study comprehensively reviews the literature on UGC- generative motivations published from January 2005 to December 2022. Using the Web of Science (WoS) and China National Knowledge Infrastructure (CNKI) databases, we updated retrieving English and Chinese literature in June and November 2024, respectively. We screened the identified studies based on specific inclusion and exclusion criteria, resulting in 63 and another 3 primary studies. These studies were analyzed to extract 13 distinct UGC-generative motivations, 46 motivation influence factors, and 22 most empirically supported theoretical perspectives. The relationship between motivations and motivation influence factors was classified into intrinsic, extrinsic, personal, and technical levels. Our findings indicate a notable gap in empirical research regarding UGC generation from the perspectives of knowledge ecosystems and cognitive surplus, particularly in the context of Technical and Vocational Education and Training (TVET) online learning. The study underscores the importance of leveraging cognitive surplus to enhance the UGC knowledge ecosystem, specifically recommending targeted strategies for educators and platform designers to motivate TVET teachers to contribute to UGC effectively.http://www.sciencedirect.com/science/article/pii/S2666557324000752UGC-generative motivationCognitive surplusKnowledge ecosystemReviewPRISMATVET
spellingShingle Yaoyao Zhang
Christina Ioanna Pappa
Daniel Pittich
Exploring user-generated content motivations: A systematic review of theoretical perspectives and empirical gaps in online learning
Computers and Education Open
UGC-generative motivation
Cognitive surplus
Knowledge ecosystem
Review
PRISMA
TVET
title Exploring user-generated content motivations: A systematic review of theoretical perspectives and empirical gaps in online learning
title_full Exploring user-generated content motivations: A systematic review of theoretical perspectives and empirical gaps in online learning
title_fullStr Exploring user-generated content motivations: A systematic review of theoretical perspectives and empirical gaps in online learning
title_full_unstemmed Exploring user-generated content motivations: A systematic review of theoretical perspectives and empirical gaps in online learning
title_short Exploring user-generated content motivations: A systematic review of theoretical perspectives and empirical gaps in online learning
title_sort exploring user generated content motivations a systematic review of theoretical perspectives and empirical gaps in online learning
topic UGC-generative motivation
Cognitive surplus
Knowledge ecosystem
Review
PRISMA
TVET
url http://www.sciencedirect.com/science/article/pii/S2666557324000752
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AT christinaioannapappa exploringusergeneratedcontentmotivationsasystematicreviewoftheoreticalperspectivesandempiricalgapsinonlinelearning
AT danielpittich exploringusergeneratedcontentmotivationsasystematicreviewoftheoreticalperspectivesandempiricalgapsinonlinelearning