Randomized sequential importance sampling for estimating the number of perfect matchings in bipartite graphs
Abstract
We introduce and study randomized sequential importance sampling algorithms for estimating the number of perfect matchings in bipartite graphs. In analyzing their performance, we establish various non-standard central limit theorems. We expect our methods to be useful for other applied problems.
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