Learning families of algebraic structures from informant
Abstract
We combine computable structure theory and algorithmic learning theory to study learning of families of algebraic structures. Our main result is a model-theoretic characterization of the class InfEx, consisting of the structures whose isomorphism types can be learned in the limit. We show that a family of structures K is InfEx-learnable if and only if the structures from K can be distinguished in terms of their inf2-theories. We apply this characterization to familiar cases and we show the following: there is an infinite learnable family of distributive lattices; no pair of Boolean algebras is learnable; no infinite family of linear orders is learnable.
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