Measuring those who have their minds set: An item-level meta-analysis of the implicit theories of intelligence scale in education

Educational Research Review - Tập 37 - Trang 100479 - 2022
Ronny Scherer1, Diego Campos1
1Centre for Educational Measurement at the University of Oslo (CEMO), Faculty of Educational Sciences, University of Oslo, (CEMO), Norway

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