Rethinking Generalisation

11/11/2019
by   Antonia Marcu, et al.
0

In this paper, we present a new approach to computing the generalisation performance assuming that the distribution of risks, ρ(r), for a learning scenario is known. This allows us to compute the expected error of a learning machine using empirical risk minimisation. We show that it is possible to obtain results for both classification and regression. We show a critical quantity in determining the generalisation performance is the power-law behaviour of ρ(r) around its minimum value. We compute ρ(r) for the case of all Boolean functions and for the perceptron. We start with a simplistic analysis but then do a more formal one later on. We show that the simplistic results are qualitatively correct and provide a good approximation to the actual results if we replace the true training set size with an approximate training set size.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/13/2018

Training Set Camouflage

We introduce a form of steganography in the domain of machine learning w...
research
06/22/2020

Good linear classifiers are abundant in the interpolating regime

Within the machine learning community, the widely-used uniform convergen...
research
02/16/2021

Recommending Training Set Sizes for Classification

Based on a comprehensive study of 20 established data sets, we recommend...
research
02/15/2022

Generalisation and the Risk–Entropy Curve

In this paper we show that the expected generalisation performance of a ...
research
02/12/2019

A new Backdoor Attack in CNNs by training set corruption without label poisoning

Backdoor attacks against CNNs represent a new threat against deep learni...
research
07/11/2019

Minimizers of the Empirical Risk and Risk Monotonicity

Plotting a learner's average performance against the number of training ...
research
12/11/2021

Test Set Sizing Via Random Matrix Theory

This paper uses techniques from Random Matrix Theory to find the ideal t...

Please sign up or login with your details

Forgot password? Click here to reset