Agnostic PAC Learning of k-juntas Using L2-Polynomial Regression

03/08/2023
by   Mohsen Heidari, et al.
0

Many conventional learning algorithms rely on loss functions other than the natural 0-1 loss for computational efficiency and theoretical tractability. Among them are approaches based on absolute loss (L1 regression) and square loss (L2 regression). The first is proved to be an agnostic PAC learner for various important concept classes such as juntas, and half-spaces. On the other hand, the second is preferable because of its computational efficiency, which is linear in the sample size. However, PAC learnability is still unknown as guarantees have been proved only under distributional restrictions. The question of whether L2 regression is an agnostic PAC learner for 0-1 loss has been open since 1993 and yet has to be answered. This paper resolves this problem for the junta class on the Boolean cube – proving agnostic PAC learning of k-juntas using L2 polynomial regression. Moreover, we present a new PAC learning algorithm based on the Boolean Fourier expansion with lower computational complexity. Fourier-based algorithms, such as Linial et al. (1993), have been used under distributional restrictions, such as uniform distribution. We show that with an appropriate change, one can apply those algorithms in agnostic settings without any distributional assumption. We prove our results by connecting the PAC learning with 0-1 loss to the minimum mean square estimation (MMSE) problem. We derive an elegant upper bound on the 0-1 loss in terms of the MMSE error and show that the sign of the MMSE is a PAC learner for any concept class containing it.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/11/2021

On Agnostic PAC Learning using ℒ_2-polynomial Regression and Fourier-based Algorithms

We develop a framework using Hilbert spaces as a proxy to analyze PAC le...
research
10/22/2020

The Polynomial Method is Universal for Distribution-Free Correlational SQ Learning

We consider the problem of distribution-free learning for Boolean functi...
research
11/28/2022

PAC Verification of Statistical Algorithms

Goldwasser et al. (2021) recently proposed the setting of PAC verificati...
research
12/15/2019

One-Shot Induction of Generalized Logical Concepts via Human Guidance

We consider the problem of learning generalized first-order representati...
research
10/07/2020

Learning Half-Spaces and other Concept Classes in the Limit with Iterative Learners

In order to model an efficient learning paradigm, iterative learning alg...
research
05/30/2023

Algorithmic Foundations of Inexact Computing

Inexact computing also referred to as approximate computing is a style o...
research
05/15/2023

SAT-Based PAC Learning of Description Logic Concepts

We propose bounded fitting as a scheme for learning description logic co...

Please sign up or login with your details

Forgot password? Click here to reset