A Property Induction Framework for Neural Language Models

Abstract

To what extent can experience from language contribute to our conceptual knowledge? Computational explorations of this question have shed light on the ability of powerful neural language models (LMs) – informed solely through text input – to encode and elicit information about concepts and properties. To extend this line of research, we present a framework that uses neural-network language models (LMs) to perform property induction – a task in which humans generalize novel property knowledge (has sesamoid bones) from one or more concepts (robins) to others (sparrows, canaries). Patterns of property induction observed in humans have shed considerable light on the nature and organization of human conceptual knowledge. Inspired by this insight, we use our framework to explore the property inductions of LMs, and find that they show an inductive preference to generalize novel properties on the basis of category membership, suggesting the presence of a taxonomic bias in their representations.

Publication
In Proceedings of the 44th Annual Conference of the Cognitive Science Society
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Kanishka Misra
Kanishka Misra
Postdoc at UT Austin

My research interests include Natural Language Processing, Cognitive Science, and Deep Learning.