Metacognition and Approaches Regarding Internet-Based Learning in Taiwanese University Students

Titolo Rivista RICERCHE DI PSICOLOGIA
Autori/Curatori Min-Hsien Lee, Manuela Cantoia, Paola Iannello, Alessandro Antonietti, Jyh-Chong Liang, Chin-Chung Tsai
Anno di pubblicazione 2022 Fascicolo 2022/2 Lingua Inglese
Numero pagine 21 P. 1-21 Dimensione file 0 KB
DOI 10.3280/rip2022oa14576
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While learning in Internet-based environments, students rely on metacognitive knowledge to organize, record, monitor, and review their learning path. In this experience, they may reveal either a “surface” or “deep” approach. In this study, 509 university students were administered the adapted versions of the ‘Metacognitive Knowledge regarding Internet-based Learning’ questionnaire and of the ‘Approaches to Internet-based Learning’ questionnaire. Positive correlations between metacognitive knowledge and approaches to Internet-based learning environments emerged: The metacognitive attitude was associated to a concerned and critical approach to learning whereas the negative attitude about Internet-based learning was associated to the surface approach. Students showed a global understanding of the peculiarities and opportunities of Internet-based learning environments rather than empathize a single cognitive or metacognitive feature.

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Min-Hsien Lee, Manuela Cantoia, Paola Iannello, Alessandro Antonietti, Jyh-Chong Liang, Chin-Chung Tsai, Metacognition and Approaches Regarding Internet-Based Learning in Taiwanese University Students in "RICERCHE DI PSICOLOGIA" 2/2022, pp 1-21, DOI: 10.3280/rip2022oa14576