TY - JOUR
T1 - Large deviations for weighted sums of stretched exponential random variables
AU - Gantert, Nina
AU - Ramanan, Kavita
AU - Rembart, Franz
PY - 2014/7/12
Y1 - 2014/7/12
N2 - We consider the probability that a weighted sum of n i.i.d. random variables Xj, j = 1,..., n, with stretched exponential tails is larger than its expectation and deter- mine the rate of its decay, under suitable conditions on the weights. We show that the decay is subexponential, and identify the rate function in terms of the tails of Xj and the weights. Our result generalizes the large deviation principle given by Kiesel and Stadtmüller [9] as well as the tail asymptotics for sums of i.i.d. random variables provided by Nagaev [10, 11]. As an application of our result, motivated by random projections of high-dimensional vectors, we consider the case of random, self-normalized weights that are independent of the sequence {Xj}j∈N, identify the decay rate for both the quenched and annealed large deviations in this case, and show that they coincide. As another application we consider weights derived from kernel functions that arise in nonparametric regression.
AB - We consider the probability that a weighted sum of n i.i.d. random variables Xj, j = 1,..., n, with stretched exponential tails is larger than its expectation and deter- mine the rate of its decay, under suitable conditions on the weights. We show that the decay is subexponential, and identify the rate function in terms of the tails of Xj and the weights. Our result generalizes the large deviation principle given by Kiesel and Stadtmüller [9] as well as the tail asymptotics for sums of i.i.d. random variables provided by Nagaev [10, 11]. As an application of our result, motivated by random projections of high-dimensional vectors, we consider the case of random, self-normalized weights that are independent of the sequence {Xj}j∈N, identify the decay rate for both the quenched and annealed large deviations in this case, and show that they coincide. As another application we consider weights derived from kernel functions that arise in nonparametric regression.
KW - Kernels
KW - Large deviations
KW - Nonparametric regression
KW - Quenched and annealed large deviations
KW - Self-normalized weights
KW - Stretched exponential random variables
KW - Subexponential random variables
KW - Weighted sums
UR - http://www.scopus.com/inward/record.url?scp=84904344311&partnerID=8YFLogxK
U2 - 10.1214/ECP.v19-3266
DO - 10.1214/ECP.v19-3266
M3 - Article
AN - SCOPUS:84904344311
SN - 1083-589X
VL - 19
JO - Electronic Communications in Probability
JF - Electronic Communications in Probability
ER -