4,156 research outputs found

    Binomial upper bounds on generalized moments and tail probabilities of (super)martingales with differences bounded from above

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    Let (S0,S1,...)(S_0,S_1,...) be a supermartingale relative to a nondecreasing sequence of Οƒ\sigma-algebras H≀0,H≀1,...H_{\le0},H_{\le1},..., with S0≀0S_0\le0 almost surely (a.s.) and differences Xi:=Siβˆ’Siβˆ’1X_i:=S_i-S_{i-1}. Suppose that Xi≀dX_i\le d and Var(Xi∣H≀iβˆ’1)≀σi2\mathsf {Var}(X_i|H_{\le i-1})\le \sigma_i^2 a.s. for every i=1,2,...i=1,2,..., where d>0d>0 and Οƒi>0\sigma_i>0 are non-random constants. Let Tn:=Z1+...+ZnT_n:=Z_1+...+Z_n, where Z1,...,ZnZ_1,...,Z_n are i.i.d. r.v.'s each taking on only two values, one of which is dd, and satisfying the conditions EZi=0\mathsf {E}Z_i=0 and VarZi=Οƒ2:=1n(Οƒ12+...+Οƒn2)\mathsf {Var}Z_i=\sigma ^2:=\frac{1}{n}(\sigma_1^2+...+\sigma_n^2). Then, based on a comparison inequality between generalized moments of SnS_n and TnT_n for a rich class of generalized moment functions, the tail comparison inequality \mathsf P(S_n\ge y) \le c \mathsf P^{\mathsf Lin,\mathsf L C}(T_n\ge y+\tfrach2)\quad\forall y\in \mathbb R is obtained, where c:=e2/2=3.694...c:=e^2/2=3.694..., h:=d+Οƒ2/dh:=d+\sigma ^2/d, and the function y↦PLin,LC(Tnβ‰₯y)y\mapsto \mathsf {P}^{\mathsf {Lin},\mathsf {LC}}(T_n\ge y) is the least log-concave majorant of the linear interpolation of the tail function y↦P(Tnβ‰₯y)y\mapsto \mathsf {P}(T_n\ge y) over the lattice of all points of the form nd+khnd+kh (k∈Zk\in \mathbb {Z}). An explicit formula for PLin,LC(Tnβ‰₯y+h2)\mathsf {P}^{\mathsf {Lin},\mathsf {LC}}(T_n\ge y+\tfrac{h}{2}) is given. Another, similar bound is given under somewhat different conditions. It is shown that these bounds improve significantly upon known bounds.Comment: Published at http://dx.doi.org/10.1214/074921706000000743 in the IMS Lecture Notes Monograph Series (http://www.imstat.org/publications/lecnotes.htm) by the Institute of Mathematical Statistics (http://www.imstat.org

    Optimal binomial, Poisson, and normal left-tail domination for sums of nonnegative random variables

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    Let X1,…,XnX_1,\dots,X_n be independent nonnegative random variables (r.v.'s), with Sn:=X1+β‹―+XnS_n:=X_1+\dots+X_n and finite values of si:=EXi2s_i:=E X_i^2 and mi:=EXi>0m_i:=E X_i>0. Exact upper bounds on Ef(Sn)E f(S_n) for all functions ff in a certain class F\mathcal{F} of nonincreasing functions are obtained, in each of the following settings: (i) n,m1,…,mn,s1,…,snn,m_1,\dots,m_n,s_1,\dots,s_n are fixed; (ii) nn, m:=m1+β‹―+mnm:=m_1+\dots+m_n, and s:=s1+β‹―+sns:=s_1+\dots+s_n are fixed; (iii)~only mm and ss are fixed. These upper bounds are of the form Ef(Ξ·)E f(\eta) for a certain r.v. Ξ·\eta. The r.v. Ξ·\eta and the class F\mathcal{F} depend on the choice of one of the three settings. In particular, (m/s)Ξ·(m/s)\eta has the binomial distribution with parameters nn and p:=m2/(ns)p:=m^2/(ns) in setting (ii) and the Poisson distribution with parameter Ξ»:=m2/s\lambda:=m^2/s in setting (iii). One can also let Ξ·\eta have the normal distribution with mean mm and variance ss in any of these three settings. In each of the settings, the class F\mathcal{F} contains, and is much wider than, the class of all decreasing exponential functions. As corollaries of these results, optimal in a certain sense upper bounds on the left-tail probabilities P(Sn≀x)P(S_n\le x) are presented, for any real xx. In fact, more general settings than the ones described above are considered. Exact upper bounds on the exponential moments Eexp⁑{hSn}E\exp\{hS_n\} for h<0h<0, as well as the corresponding exponential bounds on the left-tail probabilities, were previously obtained by Pinelis and Utev. It is shown that the new bounds on the tails are substantially better.Comment: Version 2: fixed a typo (p. 17, line 2) and added a detail (p. 17, line 9). Version 3: Added another proof of Lemma 3.2, using the Redlog package of the computer algebra system Reduce (open-source and freely distributed
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