Adaptive Design and Stochastic Approximation

When y= M(x) + e, where M may be nonlinear, adaptive stochastic approximation schemes for the choice of the levels x 1, x 2, ··· at which y 1, y 2, ··· are observed lead to asymptotically efficient estimates of the value θ of x for which M(θ) is equal to some desired value. More importantly, these schemes make the “cost” of the observations, defined at the nth stage to be Σ 1 n (x i - θ)2, to be of the order of log n instead of n, an obvious advantage in many applications. A general asymptotic theory is developed which includes these adaptive designs and the classical stochastic approximation schemes as special cases. Motivated by the cost considerations, some improvements are made in the pairwise sampling stochastic approximation scheme of Venter.