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The relation between cognitive and metacognitive processing: Building bridges between the SRL, MDL, and SAL domains

Bibliographic reference Coertjens, Liesje. The relation between cognitive and metacognitive processing: Building bridges between the SRL, MDL, and SAL domains. In: British Journal of Educational Psychology, Vol. 88, p. 138-151 (2018)
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