tutored problem-solving and worked-examples is
taken by students who assessed the direct way of
untutored problem-solving to be -still- impassable,
explaining the relationship with prior knowledge.
The current study has focussed on individual
differences between students in their preference for
learning strategies, and the relationship with learning
dispositions. In future research, we intend to
additionally include the task dimension, by
investigating student preference for learning
strategies as a function of both individual differences
in learning dispositions and task characteristics.
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