Stochastic Gradients: Optimization, Simulation, Randomization, and Sensitivity Analysis

Big data and high-dimensional optimization problems in operations research (OR) and artificial intelligence (AI) have brought stochastic gradients to the forefront. This article provides a view of research and applications in stochastic gradient estimation from multiple perspectives, as seminal advances have come from diverse and disparate research fields, including operations research/management science (OR/MS), industrial/systems engineering (ISE), optimal/stochastic control, statistics, and more recently from the computer science (CS) AI machine learning (ML) community.

Michael C. Fu (University of Maryland), Jiaqiao Hu (Stony Brook University, and Katya Scheinberg (Georgia Institute of Technology)

IISE Transactions
  • Michael Fu
  • Decision, Operations and Information Technologies
  • Supply chain and operations management
  • Artificial intelligence (AI)
  • Information Technology
    Back to Top