Sharp upper bounds for the deviations from the mean of the sum of independent Rademacher random variables
Abstract
For a fixed unit vector a=(a1,a2,...,an) in Sn-1, i.e. sumi=1n ai2=1, we consider the 2n sign vectors epsilon=(epsilon1,epsilon2,...,epsilonn) in -1,1n and the corresponding scalar products a.epsilon=sumi=1n ai epsiloni. Holtzman and Kleitman formulated the following conjecture. It states that among the 2n sums of the form sum +/- ai there are not more with |sumi=1n +/- ai|>1 than there are with |sumi=1n +/- ai| <= 1. The result is of interest in itself, but has also an appealing reformulation in probability theory and in geometry. In this paper we will solve an extension of this problem in the uniform case where all the a's are equal. More precisely, for Sn being a sum of n independent Rademacher random variables, we will give, for several values of xi, precise lower bounds for the probabilities Pn:=P-xi sqrtn <= Sn <= xi sqrtn. There is an obvious relationship with the binomial distribution with parameters n and p=1/2. The obtained lower bounds are sharp and much better than for instance the bound that can be obtained from application of the Chebishev inequality. In case xi=1 Van Zuijlen solved this problem. We remark that our bound will have nice applications in probability theory and especially in random walk theory.
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