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  1. A Hierarchical Bayesian Model of Adaptive Teaching.Alicia M. Chen, Andrew Palacci, Natalia Vélez, Robert D. Hawkins & Samuel J. Gershman - 2024 - Cognitive Science 48 (7):e13477.
    How do teachers learn about what learners already know? How do learners aid teachers by providing them with information about their background knowledge and what they find confusing? We formalize this collaborative reasoning process using a hierarchical Bayesian model of pedagogy. We then evaluate this model in two online behavioral experiments (N = 312 adults). In Experiment 1, we show that teachers select examples that account for learners' background knowledge, and adjust their examples based on learners' feedback. In Experiment 2, (...)
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  • Expanding horizons in reinforcement learning for curious exploration and creative planning.Dale Zhou & Aaron M. Bornstein - 2024 - Behavioral and Brain Sciences 47:e118.
    Curiosity and creativity are expressions of the trade-off between leveraging that with which we are familiar or seeking out novelty. Through the computational lens of reinforcement learning, we describe how formulating the value of information seeking and generation via their complementary effects on planning horizons formally captures a range of solutions to striking this balance.
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  • Deconstructing the human algorithms for exploration.Samuel J. Gershman - 2018 - Cognition 173 (C):34-42.
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