Affiliation:
1. Rochester Institute of Technology, USA
2. University of Oxford, UK
3. University of Rochester, USA
Abstract
Spectral independence is a recently developed framework for obtaining sharp bounds on the convergence time of the classical Glauber dynamics. This new framework has yielded optimal
O(n
log
n)
sampling algorithms on bounded-degree graphs for a large class of problems throughout the so-called uniqueness regime, including, for example, the problems of sampling independent sets, matchings, and Ising-model configurations. Our main contribution is to relax the bounded-degree assumption that has so far been important in establishing and applying spectral independence. Previous methods for avoiding degree bounds rely on using
L
p
-norms to analyse contraction on graphs with bounded connective constant (Sinclair, Srivastava, and Yin, FOCS’13). The non-linearity of
L
p
-norms is an obstacle to applying these results to bound spectral independence. Our solution is to capture the
L
p
-analysis recursively by amortising over the subtrees of the recurrence used to analyse contraction. Our method generalises previous analyses that applied only to bounded-degree graphs. As a main application of our techniques, we consider the random graph
G (n, d/n)
, where the previously known algorithms run in time
n
O
(log
d
) or applied only to large
d
. We refine these algorithmic bounds significantly, and develop fast nearly linear algorithms based on Glauber dynamics that apply to all constant
d
, throughout the uniqueness regime.
Publisher
Association for Computing Machinery (ACM)
Subject
Mathematics (miscellaneous)