Learning by Explaining to Oneself
نویسندگان
چکیده
منابع مشابه
Learning by Explaining to Oneself and to Others
One important source for the acquisition of knowledge, especially of factual knowledge, is the construction, transmission and comprehension of explanations. Two distinctive settings in which explanations are constructed are self-explanation, in which a single individual explains to himself and interactive explanation in which several individuals mutually and interactively explain to each other....
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