
Premium content
Access to this content requires a subscription. You must be a premium user to view this content.

Would you like to see your presentation here, made available to a global audience of researchers?
Add your own presentation or have us affordably record your next conference.
Humans learn and generate languages, music, games, and seemingly limitless varieties of other structures across domains. Unlike many AI systems, we often do so from little data. How do we learn such large varieties of richly structured representations so efficiently? One possibility is that people learn by programming,'' synthesizing data-generating algorithms to explain what we observe. We examine the nature and origins of this learning mechanism in adults, children, and nonhuman primates (macaque monkeys), using a highly unconstrained sequence prediction task. Although adults and children quickly learn many richly structured sequences, monkeys learn only the simplest sequences (e.g. lines). We test multiple learning models, finding that adults are best explained by aLanguage of Thought''-like program-learning model and monkeys by a simpler extrapolation strategy. Children exhibit varied learning strategies but are best fit in aggregate by an intermediately expressive model. Paper available at https://sites.google.com/view/patternlearning.
Authors:
Tracey Mills: MIT; Nicole Coates: Massachusetts Institute of Technology; Alessandra A. Silva: University of Wisconsin-Madison; Stephen Ferrigno: University of Wisconsin-Madison; Laura Schulz: Massachusetts Institute of Technology; Josh Tenenbaum: MIT; Samuel J. Cheyette: MIT
