Complexity Measures and Concept Learning
Andreas D. Pape, Kenneth J. Kurtz, Hiroki Sayama

TL;DR
This paper introduces an information complexity measure based on Shannon entropy to predict the difficulty order of concept learning tasks, improving understanding of how humans and animals acquire categories.
Contribution
It proposes a new information-theoretic complexity measure that predicts classification difficulty orders, extending prior logical complexity models and outperforming existing metrics.
Findings
The new measure predicts both paradigm-specific and general difficulty orders.
It outperforms Boolean complexity and GIST in predicting learning difficulty.
The measure applies effectively to canonical and non-canonical category types.
Abstract
The nature of concept learning is a core question in cognitive science. Theories must account for the relative difficulty of acquiring different concepts by supervised learners. For a canonical set of six category types, two distinct orderings of classification difficulty have been found. One ordering, which we call paradigm-specific, occurs when adult human learners classify objects with easily distinguishable characteristics such as size, shape, and shading. The general order occurs in all other known cases: when adult humans classify objects with characteristics that are not readily distinguished (e.g., brightness, saturation, hue); for children and monkeys; and when categorization difficulty is extrapolated from errors in identification learning. The paradigm-specific order was found to be predictable mathematically by measuring the logical complexity of tasks, i.e., how concisely…
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