Simpler PAC-Bayesian Bounds for Hostile Data

10/23/2016
by   Pierre Alquier, et al.
0

PAC-Bayesian learning bounds are of the utmost interest to the learning community. Their role is to connect the generalization ability of an aggregation distribution ρ to its empirical risk and to its Kullback-Leibler divergence with respect to some prior distribution π. Unfortunately, most of the available bounds typically rely on heavy assumptions such as boundedness and independence of the observations. This paper aims at relaxing these constraints and provides PAC-Bayesian learning bounds that hold for dependent, heavy-tailed observations (hereafter referred to as hostile data). In these bounds the Kullack-Leibler divergence is replaced with a general version of Csiszár's f-divergence. We prove a general PAC-Bayesian bound, and show how to use it in various hostile settings.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/17/2021

A General Framework for the Derandomization of PAC-Bayesian Bounds

PAC-Bayesian bounds are known to be tight and informative when studying ...
research
06/07/2023

Learning via Wasserstein-Based High Probability Generalisation Bounds

Minimising upper bounds on the population risk or the generalisation gap...
research
03/28/2015

Risk Bounds for the Majority Vote: From a PAC-Bayesian Analysis to a Learning Algorithm

We propose an extensive analysis of the behavior of majority votes in bi...
research
02/14/2012

PAC-Bayesian Policy Evaluation for Reinforcement Learning

Bayesian priors offer a compact yet general means of incorporating domai...
research
12/07/2017

Dimension-free PAC-Bayesian bounds for matrices, vectors, and linear least squares regression

This paper is focused on dimension-free PAC-Bayesian bounds, under weak ...
research
12/11/2007

PAC-Bayesian Bounds for Randomized Empirical Risk Minimizers

The aim of this paper is to generalize the PAC-Bayesian theorems proved ...
research
06/07/2022

Shedding a PAC-Bayesian Light on Adaptive Sliced-Wasserstein Distances

The Sliced-Wasserstein distance (SW) is a computationally efficient and ...

Please sign up or login with your details

Forgot password? Click here to reset