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DR@W Forum: Neil Bramley (Edinburgh)

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Location: WBS 1.007

Humans form rich causal models of the world that support prediction, explanation, planning and control. While Bayesian methods help formalize how such representations can be learned from data, they are only tractable in the simplest cases. Thus, a key question is how bounded human learners succeed in the face of the world鈥檚 formidable complexity. I will discuss a project aimed at unravelling this mystery. We investigate how people learn about probabilistic causal systems by performing interventions (actions that perturb a system of interest, like pushing a button, taking a medicine, or implementing a policy). Across a line of studies and extensive model comparison, I show that people adjust their causal representations in a piecemeal fashion, making small local changes rather than more extensive 鈥淜uhnian鈥 revisions. I formalize this with a model inspired by algorithms for approximating Bayesian inference, and use this model to explain how bounded learners can find high probability hypotheses even in complex learning domains. If there is time, I鈥檒l mention several ways we are extending these ideas this to capture other aspects of human learning.

Key paper:

Recent extension to concept learning:

And incorporation of bootstrapping:

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