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Can Humans Do Less-Than-One-Shot Learning?

Authors :
Malaviya, Maya
Malaviya, Maya
Source :
Proceedings of the Annual Meeting of the Cognitive Science Society; vol 44, iss 44
Publication Year :
2022

Abstract

Being able to learn from small amounts of data is a key characteristic of human intelligence, but exactly how small? In this paper, we introduce a novel experimental paradigm that allows us to examine classification in an extremely data-scarce setting, asking whether humans can learn more categories than they have exemplars (i.e., can humans do "less-than-one shot'' learning?). An experiment conducted using this paradigm reveals that people are capable of learning in such settings, and provides several insights into underlying mechanisms. First, people can accurately infer and represent high-dimensional feature spaces from very little data. Second, having inferred the relevant spaces, people use a form of prototype-based categorization (as opposed to exemplar-based) to make categorical inferences. Finally, systematic, machine-learnable patterns in responses indicate that people may have efficient inductive biases for dealing with this class of data-scarce problems.

Details

Database :
OAIster
Journal :
Proceedings of the Annual Meeting of the Cognitive Science Society; vol 44, iss 44
Notes :
Malaviya, Maya, Sucholutsky, Ilia, Oktar, Kerem, Griffiths, Tom
Publication Type :
Electronic Resource
Accession number :
edsoai.on1334013476
Document Type :
Electronic Resource