Speaker: Professor Robert Goldstone (Indiana University)
Abstract
A key component of humans' striking creativity in solving problems is our ability to construct novel descriptions to help us characterize novel categories.
Bongard problems challenge the problem solver to come up with a rule for distinguishing visual scenes that fall into two categories, and provide an elegant test of this ability.
Bongard problems are challenging for both human and machine category learners because only a handful of example scenes are presented for each category, and they often require the open-ended creation of new descriptions.
They (Weitnauer, Goldstone, & Ritter, 2023) introduce a new sub-type of Bongard problem called Physical Bongard Problems (PBPs), which require solvers to perceive and predict the physical spatial dynamics implicit in the depicted scenes.
They will present a new computational model, PATHS (Perceiving And Testing Hypotheses on Structures) which can solve many PBPs, and compare it to human performance on the same problems.
The core theoretical commitments of PATHS which they believe to also exemplify human open-ended category learning are:
- the continual perception of new scene descriptions over the course of category learning
- the context-dependent nature of that perceptual process, in which the scenes establish the context for one another
- hypothesis construction by combining descriptions into logical expressions
- bi-directional interactions between perceiving new aspects of scenes and constructing hypotheses for the rule that distinguishes categories.
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