Optimizing Instructional Policies Robert V. Lindsey, Michael C. Mozer, William J. Huggins
–Neural Information Processing Systems
Psychologists are interested in developing instructional policies that boost student learning. An instructional policy specifies the manner and content of instruction. For example, in the domain of concept learning, a policy might specify the nature of exemplars chosen over a training sequence. Traditional psychological studies compare several hand-selected policies, e.g., contrasting a policy that selects only difficult-to-classify exemplars with a policy that gradually progresses over the training sequence from easy exemplars to more difficult (known as fading). We propose an alternative to the traditional methodology in which we define a parameterized space of policies and search this space to identify the optimal policy.
Neural Information Processing Systems
Mar-13-2024, 18:52:25 GMT
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