This paper contributes to the study of CPAC learnability - a computable version of PAC learning - by solving three open questions from recent papers. Firstly, we prove that every improperly CPAC learnable class is contained in a class which is properly CPAC learnable with polynomial sample complexity. This confirms a conjecture by Agarwal et al (COLT 2021). Secondly, we show that there exists a decidable class of hypotheses which is properly CPAC learnable, but only with uncomputably fast-growing sample complexity. This solves a question from Sterkenburg (COLT 2022). Finally, we construct a decidable class of finite Littlestone dimension which is not improperly CPAC learnable, strengthening a recent result of Sterkenburg (2022) and answering a question posed by Hasrati and Ben-David (ALT 2023). Together with previous work, our results provide a complete landscape for the learnability problem in the CPAC setting.

Find a witness or shatter: the landscape of computable PAC learning / Delle Rose, Valentino; Kozachinskiy, Alexander; Rojas, Cristobal; Steifer, Tomasz. - 195:(2023), pp. 511-524. ( 36th Annual Conference on Learning Theory, COLT 2023 Bangalore; India ).

Find a witness or shatter: the landscape of computable PAC learning

Delle Rose Valentino
Primo
Membro del Collaboration Group
;
2023

Abstract

This paper contributes to the study of CPAC learnability - a computable version of PAC learning - by solving three open questions from recent papers. Firstly, we prove that every improperly CPAC learnable class is contained in a class which is properly CPAC learnable with polynomial sample complexity. This confirms a conjecture by Agarwal et al (COLT 2021). Secondly, we show that there exists a decidable class of hypotheses which is properly CPAC learnable, but only with uncomputably fast-growing sample complexity. This solves a question from Sterkenburg (COLT 2022). Finally, we construct a decidable class of finite Littlestone dimension which is not improperly CPAC learnable, strengthening a recent result of Sterkenburg (2022) and answering a question posed by Hasrati and Ben-David (ALT 2023). Together with previous work, our results provide a complete landscape for the learnability problem in the CPAC setting.
2023
36th Annual Conference on Learning Theory, COLT 2023
computability; CPAC learnability; foundations of machine learning; Littlestone dimension; PAC learnability; VC dimension
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Find a witness or shatter: the landscape of computable PAC learning / Delle Rose, Valentino; Kozachinskiy, Alexander; Rojas, Cristobal; Steifer, Tomasz. - 195:(2023), pp. 511-524. ( 36th Annual Conference on Learning Theory, COLT 2023 Bangalore; India ).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1713772
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