Perfect sampling methods for random forests

Authors
Citation
Dai, Hongsheng, Perfect sampling methods for random forests, Advances in applied probability , 40(2), 2008, pp. 897-917
ISSN journal
00018678
Volume
40
Issue
2
Year of publication
2008
Pages
897 - 917
Database
ACNP
SICI code
Abstract
A weighted graph G is a pair (V, .) containing vertex set V and edge set ., where each edge e . . is associated with a weight We. A subgraph of G is a forest if it has no cycles. All forests on the graph G form a probability space, where the probability of each forest is proportional to the product of the weights of its edges. This paper aims to simulate forests exactly from the target distribution. Methods based on coupling from the past (CFTP) and rejection sampling are presented. Comparisons of these methods are given theoretically and via simulation.