On Computable Online Learning

02/08/2023
by   Niki Hasrati, et al.
0

We initiate a study of computable online (c-online) learning, which we analyze under varying requirements for "optimality" in terms of the mistake bound. Our main contribution is to give a necessary and sufficient condition for optimal c-online learning and show that the Littlestone dimension no longer characterizes the optimal mistake bound of c-online learning. Furthermore, we introduce anytime optimal (a-optimal) online learning, a more natural conceptualization of "optimality" and a generalization of Littlestone's Standard Optimal Algorithm. We show the existence of a computational separation between a-optimal and optimal online learning, proving that a-optimal online learning is computationally more difficult. Finally, we consider online learning with no requirements for optimality, and show, under a weaker notion of computability, that the finiteness of the Littlestone dimension no longer characterizes whether a class is c-online learnable with finite mistake bound. A potential avenue for strengthening this result is suggested by exploring the relationship between c-online and CPAC learning, where we show that c-online learning is as difficult as improper CPAC learning.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/30/2018

Online Learning with an Almost Perfect Expert

We study the online learning problem where a forecaster makes a sequence...
research
06/20/2022

Stochastic Online Learning with Feedback Graphs: Finite-Time and Asymptotic Optimality

We revisit the problem of stochastic online learning with feedback graph...
research
08/15/2023

Simple online learning with consistency oracle

We consider online learning in the model where a learning algorithm can ...
research
08/12/2021

Agnostic Online Learning and Excellent Sets

We use algorithmic methods from online learning to revisit a key idea fr...
research
02/10/2021

Characterizing the Online Learning Landscape: What and How People Learn Online

Hundreds of millions of people learn something new online every day. Sim...
research
12/05/2017

Online Learning with Gated Linear Networks

This paper describes a family of probabilistic architectures designed fo...
research
09/25/2018

Fully Implicit Online Learning

Regularized online learning is widely used in machine learning. In this ...

Please sign up or login with your details

Forgot password? Click here to reset