Title :
On the optimality and stability of exponential twisting in Monte Carlo estimation
Author :
Sadowsky, John S.
Author_Institution :
Sch. of Eng., Purdue Univ., West Lafayette, IN, USA
fDate :
1/1/1993 12:00:00 AM
Abstract :
Estimation of the large deviations probability pn =P(Sn⩾γn) via importance sampling is considered, where Sn is a sum of n i.i.d. random variables. It has been previously shown that within the nonparametric candidate family of all i.i.d. (or, more generally, Markov) distributions, the optimized exponentially twisted distribution is the unique asymptotically optimal sampling distribution. As n→∞, the sampling cost required to stabilize the normalized variance grows with strictly positive exponential rate for any suboptimal sampling distribution, while this sampling cost for the optimal exponentially twisted distribution is only O(n 1/2). Here, it is established that the optimality is actually much stronger. As n→∞, this solution simultaneously stabilizes all error moments of both the sample mean and the sample variance estimators with sampling cost O(n1/2 ). In addition, it is shown that the embedded parametric family of exponentially twisted distributions has a certain uniform asymptotic stability property. The technique is stable even if the optimal twisting parameter(s) cannot be precisely determined
Keywords :
Monte Carlo methods; information theory; probability; stability; Monte Carlo estimation; asymptotically optimal sampling distribution; exponential twisting; importance sampling; large deviations probability; normalized variance; optimality; sample mean estimators; sample variance estimators; stability; suboptimal sampling distribution; Asymptotic stability; Constraint optimization; Cost function; Distributed computing; Monte Carlo methods; Probability distribution; Q measurement; Random variables; Sampling methods;
Journal_Title :
Information Theory, IEEE Transactions on