Law of the iterated logarithm for random graphs

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Abstract

A milestone in probability theory is the law of the iterated logarithm (LIL), proved by Khinchin and independently by Kolmogorov in the 1920s, which asserts that for iid random variables (Formula presented.) with mean 0 and variance 1. In this paper we prove that LIL holds for various functionals of random graphs and hypergraphs models. We first prove LIL for the number of copies of a fixed subgraph H. Two harder results concern the number of global objects: perfect matchings and Hamiltonian cycles. The main new ingredient in these results is a large deviation bound, which may be of independent interest. For random k-uniform hypergraphs, we obtain the Central Limit Theorem and LIL for the number of Hamilton cycles.

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Ferber, A., Montealegre, D., & Vu, V. (2019). Law of the iterated logarithm for random graphs. Random Structures and Algorithms, 54(1), 3–38. https://doi.org/10.1002/rsa.20784

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