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Tsai, Chia-Lin; Cho, Moon-Heum; Marra, Rose; Shen, Demei – Distance Education, 2020
The purpose of this study was to examine the psychometric properties of the Self-Efficacy Questionnaire for Online Learning (SeQoL; Shen et al., 2013). Using two samples of college students, this study examined evidence of construct validity, concurrent validity, convergent validity, and reliability for the SeQoL. Confirmatory factor analysis and…
Descriptors: Self Efficacy, Questionnaires, Electronic Learning, Psychometrics
Broadbent, Jaclyn; Panadero, E.; Lodge, J. M.; Fuller-Tyszkiewicz, M. – Metacognition and Learning, 2023
The Self-Regulation for Learning Online (SRL-O) questionnaire was developed to encompass the breadth of motivational beliefs and learning strategies that are often used in online and/or blended learning contexts. No current measure meets all these needs. This study used two non-duplicate samples to provide evidence of the psychometric properties…
Descriptors: Independent Study, Electronic Learning, Questionnaires, Learning Motivation
Mousavi, Atekeh; Mohammadi, Aeen; Mojtahedzadeh, Rita; Shirazi, Mandana; Rashidi, Hamed – Research in Learning Technology, 2020
Universities assess their academic learning environment to improve students' learning. Students' experience in e-learning environment is different from face-to-face educational environment. So, in this study a specific valid and reliable instrument was devised for assessing perception of e-students from educational environment, that is,…
Descriptors: Likert Scales, Questionnaires, Electronic Learning, Educational Environment
Kisanga, D. H.; Ireson, G. – International Journal of Education and Development using Information and Communication Technology, 2016
The Tanzanian education system is in transition from face-to-face classroom learning to e-learning. E-learning is a new learning approach in Tanzanian Higher Learning Institutions [HLIs] and with teachers being the key stakeholders of all formal education, investigating their attitude towards e-learning is essential. So far, however, there has…
Descriptors: Foreign Countries, Electronic Learning, Attitude Measures, Likert Scales
Sae-Khow, Jirasak – Turkish Online Journal of Educational Technology - TOJET, 2014
This study was the development of e-learning indicators used as an e-learning benchmarking model for higher education institutes. Specifically, it aimed to: 1) synthesize the e-learning indicators; 2) examine content validity by specialists; and 3) explore appropriateness of the e-learning indicators. Review of related literature included…
Descriptors: Higher Education, Benchmarking, Educational Indicators, Models

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