Intention to use big data technology in teaching among higher education educators in Yunnan, China

Big data technology has brought a huge impact to the education field. Personalized learning analysis and intelligent decision support based on accurate learning diagnoses made possible with big data have greatly improved the quality of education, optimized educational management, and become vital...

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Main Author: Wang, Qianhui
Format: Thesis
Language:English
Published: 2022
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Online Access:http://psasir.upm.edu.my/id/eprint/113349/1/113349.pdf
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id my-upm-ir.113349
record_format uketd_dc
institution Universiti Putra Malaysia
collection PSAS Institutional Repository
language English
advisor Ab Jalil, Habibah
topic Big data.
Educational technology - China

spellingShingle Big data.
Educational technology - China

Wang, Qianhui
Intention to use big data technology in teaching among higher education educators in Yunnan, China
description Big data technology has brought a huge impact to the education field. Personalized learning analysis and intelligent decision support based on accurate learning diagnoses made possible with big data have greatly improved the quality of education, optimized educational management, and become vital support for realizing education modernization. However, there are still problems in teachers’ use of big data technology in teaching practice, and there is a lack of in-depth theoretical analysis and practical research on exploring the factors influencing teachers’ behavioural intentions to use big data technology in teaching. Therefore, the purpose of this study is to explore the factors influencing behavioural intention to use big data technologies in teaching among higher education educators in Yunnan based mainly on the UTAUT model and to investigate the main challenges currently perceived by higher education teachers in the field of big data in education. This quantitative correlational study involved 193 higher education educators in Kunming, Yunnan Province, selected through simple random sampling. The survey questionnaire used in this study was adapted from past related studies. Its content validity was evaluated and confirmed by experts, and it was shown to have good structural validity through exploratory and confirmatory factor analyses. The reliability values of the instrument ranged from 0.887 to 0.904. The study used IBM SPSS version 25.0 to analyse the data. The results of the independent samples t-test showed that there were no significant differences in the behavioural intention of higher education educators to adopt big data technology in teaching based on gender. The results of the one-way ANOVA showed that there were no significant differences in the behavioural intentions of educators to adopt big data technology in teaching based on both age and teaching experience. In the correlation analysis, except for effort expectation (r (193) =0.134, p=0.063 >0.05), which was not significantly related to intention to use big data technology in teaching, performance expectation, social influence, and facilitating conditions all had significant relationships with the intention to use. The results of the multiple linear regression indicated that the combination of the four independent variables contributed significantly (39%; R2 = 0.357) to educators’ intention to use big data technology, which implies that the four studied variables predicted the dependent variable. Performance expectancy (β = 0.415, p = 0.000) was found to be the most significant factor contributing to educators’ intention to use big data technology. Therefore, universities should focus on increasing educators’ awareness of the benefits as well as the outcomes of using big data technologies in teaching to encourage more educators to adopt big data technology in teaching. However, it is noteworthy that after controlling for other variables, effort expectancy and social influence became insignificant predictors. In addition, the survey revealed that the biggest obstacle to big data in education is the expensive cost. In summary, this study contributes to the knowledge of big data technology and has major implications for educators’ practice of big data technology. On the one hand, the predictive model obtained from this study is likely to be useful as a reference for future research in related fields. On the other hand, based on the factors that influence educators’ intentions to use big data technology in teaching and the main barriers that big data mainly faces in the field of education, the study provides recommendations for university administrators and policy makers to motivate educators’ intentions to use big data technology in teaching so that intentions can eventually be turned into actual usage behaviours.
format Thesis
qualification_level Master's degree
author Wang, Qianhui
author_facet Wang, Qianhui
author_sort Wang, Qianhui
title Intention to use big data technology in teaching among higher education educators in Yunnan, China
title_short Intention to use big data technology in teaching among higher education educators in Yunnan, China
title_full Intention to use big data technology in teaching among higher education educators in Yunnan, China
title_fullStr Intention to use big data technology in teaching among higher education educators in Yunnan, China
title_full_unstemmed Intention to use big data technology in teaching among higher education educators in Yunnan, China
title_sort intention to use big data technology in teaching among higher education educators in yunnan, china
granting_institution Universiti Putra Malaysia
publishDate 2022
url http://psasir.upm.edu.my/id/eprint/113349/1/113349.pdf
_version_ 1818586150064881664
spelling my-upm-ir.1133492024-10-30T03:26:31Z Intention to use big data technology in teaching among higher education educators in Yunnan, China 2022-07 Wang, Qianhui Big data technology has brought a huge impact to the education field. Personalized learning analysis and intelligent decision support based on accurate learning diagnoses made possible with big data have greatly improved the quality of education, optimized educational management, and become vital support for realizing education modernization. However, there are still problems in teachers’ use of big data technology in teaching practice, and there is a lack of in-depth theoretical analysis and practical research on exploring the factors influencing teachers’ behavioural intentions to use big data technology in teaching. Therefore, the purpose of this study is to explore the factors influencing behavioural intention to use big data technologies in teaching among higher education educators in Yunnan based mainly on the UTAUT model and to investigate the main challenges currently perceived by higher education teachers in the field of big data in education. This quantitative correlational study involved 193 higher education educators in Kunming, Yunnan Province, selected through simple random sampling. The survey questionnaire used in this study was adapted from past related studies. Its content validity was evaluated and confirmed by experts, and it was shown to have good structural validity through exploratory and confirmatory factor analyses. The reliability values of the instrument ranged from 0.887 to 0.904. The study used IBM SPSS version 25.0 to analyse the data. The results of the independent samples t-test showed that there were no significant differences in the behavioural intention of higher education educators to adopt big data technology in teaching based on gender. The results of the one-way ANOVA showed that there were no significant differences in the behavioural intentions of educators to adopt big data technology in teaching based on both age and teaching experience. In the correlation analysis, except for effort expectation (r (193) =0.134, p=0.063 >0.05), which was not significantly related to intention to use big data technology in teaching, performance expectation, social influence, and facilitating conditions all had significant relationships with the intention to use. The results of the multiple linear regression indicated that the combination of the four independent variables contributed significantly (39%; R2 = 0.357) to educators’ intention to use big data technology, which implies that the four studied variables predicted the dependent variable. Performance expectancy (β = 0.415, p = 0.000) was found to be the most significant factor contributing to educators’ intention to use big data technology. Therefore, universities should focus on increasing educators’ awareness of the benefits as well as the outcomes of using big data technologies in teaching to encourage more educators to adopt big data technology in teaching. However, it is noteworthy that after controlling for other variables, effort expectancy and social influence became insignificant predictors. In addition, the survey revealed that the biggest obstacle to big data in education is the expensive cost. In summary, this study contributes to the knowledge of big data technology and has major implications for educators’ practice of big data technology. On the one hand, the predictive model obtained from this study is likely to be useful as a reference for future research in related fields. On the other hand, based on the factors that influence educators’ intentions to use big data technology in teaching and the main barriers that big data mainly faces in the field of education, the study provides recommendations for university administrators and policy makers to motivate educators’ intentions to use big data technology in teaching so that intentions can eventually be turned into actual usage behaviours. Big data. Educational technology - China 2022-07 Thesis http://psasir.upm.edu.my/id/eprint/113349/ http://psasir.upm.edu.my/id/eprint/113349/1/113349.pdf text en public masters Universiti Putra Malaysia Big data. Educational technology - China Ab Jalil, Habibah