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  • Description: Using both history and political science classes, we show that the students who partic-ipated in the role-plays and collaborative exercises did better on subsequent standard evaluations than their traditionally instructed peers. Presented here is a discussion of active learning, descriptions of the two experiments, and an explanation of the ..

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