Stochastic ordering of order statistics

If Xi, i = 1, ⋯, n are independent exponential random variables with parameters λ1, ⋯, λn, and if Yi, i = 1, ⋯, n are independent exponential random variables with common parameter equal to (λ1 + ⋯ + λn)/n then there is a monotone coupling of the order statistics X(1), ⋯, X(n) and Y(1), ⋯, Y(n); that is, it is possible to construct on a common probability space random variables Xi′, Yi′, i = 1, ⋯, n such that for each i, Y(i)′ ≤ X(i)′ a.s., where the law of the Xi′ (respectively, the Yi′) is the same as the law of the Xi (respectively, the Yi) This result is due to Proschan and Sethuraman, and independently to Ball. We shall here prove an extension to a more general class of distributions for which the failure rate function r(x) is decreasing, and xr(x) is increasing. This very strong order relation allows comparison of properties of epidemic processes where rates of infection are not uniform with the corresponding properties for the homogeneous case. We further prove that for a sequence Zi, i = 1, ⋯, n of independent random variables whose failure rates at any time add to 1, the order statistics are stochastically larger than the order statistics of a sample of n independent exponential random variables of mean n, but that the strong monotone coupling referred to above is impossible in general.