TY - JOUR
T1 - An Evolutionary Approach to Passive Learning in Optimal Control Problems
AU - Blueschke, D.
AU - Savin, I.
AU - Blueschke-Nikolaeva, V.
N1 - Funding Information:
Open access funding provided by University of Klagenfurt.
Publisher Copyright:
© 2019, The Author(s).
PY - 2020/10
Y1 - 2020/10
N2 - We consider the optimal control problem of a small nonlinear econometric model under parameter uncertainty and passive learning (open-loop feedback). Traditionally, this type of problems has been approached by applying linear-quadratic optimization algorithms. However, the literature demonstrated that those methods are very sensitive to the choice of random seeds frequently producing very large objective function values (outliers). Furthermore, to apply those established methods, the original nonlinear problem must be linearized first, which runs the risk of solving already a different problem. Following Savin and Blueschke (Comput Econ 48(2):317–338, 2016) in explicitly addressing parameter uncertainty with a large Monte Carlo experiment of possible parameter realizations and optimizing it with the Differential Evolution algorithm, we extend this approach to the case of passive learning. Our approach provides more robust results demonstrating greater benefit from learning, while at the same time does not require to modify the original nonlinear problem at hand. This result opens new avenues for application of heuristic optimization methods to learning strategies in optimal control research.
AB - We consider the optimal control problem of a small nonlinear econometric model under parameter uncertainty and passive learning (open-loop feedback). Traditionally, this type of problems has been approached by applying linear-quadratic optimization algorithms. However, the literature demonstrated that those methods are very sensitive to the choice of random seeds frequently producing very large objective function values (outliers). Furthermore, to apply those established methods, the original nonlinear problem must be linearized first, which runs the risk of solving already a different problem. Following Savin and Blueschke (Comput Econ 48(2):317–338, 2016) in explicitly addressing parameter uncertainty with a large Monte Carlo experiment of possible parameter realizations and optimizing it with the Differential Evolution algorithm, we extend this approach to the case of passive learning. Our approach provides more robust results demonstrating greater benefit from learning, while at the same time does not require to modify the original nonlinear problem at hand. This result opens new avenues for application of heuristic optimization methods to learning strategies in optimal control research.
KW - Differential Evolution
KW - Optimal control
KW - Passive learning
KW - Stochastic problems
UR - http://www.scopus.com/inward/record.url?scp=85077600937&partnerID=8YFLogxK
U2 - 10.1007/s10614-019-09961-4
DO - 10.1007/s10614-019-09961-4
M3 - Article
C2 - 33268916
AN - SCOPUS:85077600937
SN - 0927-7099
VL - 56
SP - 659
EP - 673
JO - Computational Economics
JF - Computational Economics
IS - 3
ER -