On computable learning of continuous features

11/24/2021
by   Nathanael Ackerman, et al.
0

We introduce definitions of computable PAC learning for binary classification over computable metric spaces. We provide sufficient conditions for learners that are empirical risk minimizers (ERM) to be computable, and bound the strong Weihrauch degree of an ERM learner under more general conditions. We also give a presentation of a hypothesis class that does not admit any proper computable PAC learner with computable sample function, despite the underlying class being PAC learnable.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/10/2022

On characterizations of learnability with computable learners

We study computable PAC (CPAC) learning as introduced by Agarwal et al. ...
research
02/13/2023

Do PAC-Learners Learn the Marginal Distribution?

We study a foundational variant of Valiant and Vapnik and Chervonenkis' ...
research
06/02/2021

Undecidability of Learnability

Machine learning researchers and practitioners steadily enlarge the mult...
research
02/12/2021

A Computability Perspective on (Verified) Machine Learning

There is a strong consensus that combining the versatility of machine le...
research
03/09/2023

Computably Continuous Reinforcement-Learning Objectives are PAC-learnable

In reinforcement learning, the classic objectives of maximizing discount...
research
10/22/2020

Reducing Adversarially Robust Learning to Non-Robust PAC Learning

We study the problem of reducing adversarially robust learning to standa...
research
02/20/2023

On minimal easily computable dimension group algebras

Finite semisimple commutative group algebras for which all the minimal i...

Please sign up or login with your details

Forgot password? Click here to reset