Concentration without Independence via Information Measures

03/13/2023
by   Amedeo Roberto Esposito, et al.
0

We propose a novel approach to concentration for non-independent random variables. The main idea is to “pretend” that the random variables are independent and pay a multiplicative price measuring how far they are from actually being independent. This price is encapsulated in the Hellinger integral between the joint and the product of the marginals, which is then upper bounded leveraging tensorisation properties. Our bounds represent a natural generalisation of concentration inequalities in the presence of dependence: we recover exactly the classical bounds (McDiarmid's inequality) when the random variables are independent. Furthermore, in a “large deviations” regime, we obtain the same decay in the probability as for the independent case, even when the random variables display non-trivial dependencies. To show this, we consider a number of applications of interest. First, we provide a bound for Markov chains with finite state space. Then, we consider the Simple Symmetric Random Walk, which is a non-contracting Markov chain, and a non-Markovian setting in which the stochastic process depends on its entire past. To conclude, we propose an application to Markov Chain Monte Carlo methods, where our approach leads to an improved lower bound on the minimum burn-in period required to reach a certain accuracy. In all of these settings, we provide a regime of parameters in which our bound fares better than what the state of the art can provide.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/07/2023

Markov Chain Concentration with an Application in Reinforcement Learning

Given X_1,· ,X_N random variables whose joint distribution is given as μ...
research
03/10/2023

Rosenthal-type inequalities for linear statistics of Markov chains

In this paper, we establish novel deviation bounds for additive function...
research
02/01/2018

Hoeffding's lemma for Markov Chains and its applications to statistical learning

We establish the counterpart of Hoeffding's lemma for Markov dependent r...
research
11/20/2020

Concentration inequality for U-statistics of order two for uniformly ergodic Markov chains, and applications

We prove a new concentration inequality for U-statistics of order two fo...
research
11/03/2021

Scalar and Matrix Chernoff Bounds from ℓ_∞-Independence

We present new scalar and matrix Chernoff-style concentration bounds for...
research
04/30/2019

The Littlewood-Offord Problem for Markov Chains

The celebrated Littlewood-Offord problem asks for an upper bound on the ...
research
04/04/2023

q-Partitioning Valuations: Exploring the Space Between Subadditive and Fractionally Subadditive Valuations

For a set M of m elements, we define a decreasing chain of classes of no...

Please sign up or login with your details

Forgot password? Click here to reset