Variance Reduction for Sequential Sampling in Stochastic Programming
Jangho Park,
Rebecca Stockbridge,
Güzin Bayraksan
Abstract:This paper investigates the variance reduction techniques Antithetic Variates (AV) and Latin Hypercube Sampling (LHS) when used for sequential sampling in stochastic programming and presents a comparative computational study. It shows conditions under which the sequential sampling with AV and LHS satisfy finite stopping guarantees and are asymptotically valid, discussing LHS in detail. It computationally compares their use in both the sequential and nonsequential settings through a collection of two-stage stoc… Show more
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