Why concepts are (probably) vectors
- PMID: 39112125
- DOI: 10.1016/j.tics.2024.06.011
Why concepts are (probably) vectors
Abstract
For decades, cognitive scientists have debated what kind of representation might characterize human concepts. Whatever the format of the representation, it must allow for the computation of varied properties, including similarities, features, categories, definitions, and relations. It must also support the development of theories, ad hoc categories, and knowledge of procedures. Here, we discuss why vector-based representations provide a compelling account that can meet all these needs while being plausibly encoded into neural architectures. This view has become especially promising with recent advances in both large language models and vector symbolic architectures. These innovations show how vectors can handle many properties traditionally thought to be out of reach for neural models, including compositionality, definitions, structures, and symbolic computational processes.
Keywords: church encoding; concepts; conceptual role; vector; vector symbolic architecture.
Copyright © 2024. Published by Elsevier Ltd.
Conflict of interest statement
Declaration of interests No interests are declared.
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