On the Turing complexity of learning finite families of algebraic structures

Abstract In previous work, we have combined computable structure theory and algorithmic learning theory to study which families of algebraic structures are learnable in the limit (up to isomorphism). In this paper, we measure the computational power that is needed to learn finite families of structu...

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Veröffentlicht in:Journal of logic and computation 2021-10, Vol.31 (7), p.1891-1900
Hauptverfasser: Bazhenov, Nikolay, San Mauro, Luca
Format: Artikel
Sprache:eng
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Zusammenfassung:Abstract In previous work, we have combined computable structure theory and algorithmic learning theory to study which families of algebraic structures are learnable in the limit (up to isomorphism). In this paper, we measure the computational power that is needed to learn finite families of structures. In particular, we prove that, if a family of structures is both finite and learnable, then any oracle which computes the Halting set is able to achieve such a learning. On the other hand, we construct a pair of structures which is learnable but no computable learner can learn it.
ISSN:0955-792X
1465-363X
DOI:10.1093/logcom/exab044