TY - JOUR
T1 - Constrained Optimization with Decision-Dependent Distributions
AU - Wang, Zifan
AU - Liu, Changxin
AU - Parisini, Thomas
AU - Zavlanos, Michael M.
AU - Johansson, Karl H.
PY - 2025/2/11
Y1 - 2025/2/11
N2 - In this paper we deal with stochastic optimization problems where the data distributions change in response to the decision variables. Traditionally, the study of optimization problems with decision-dependent distributions has assumed either the absence of constraints or fixed constraints. This work considers a more general setting where the constraints can also dynamically adjust in response to changes in the decision variables. Specifically, we consider linear constraints and analyze the effect of decision-dependent distributions in both the objective function and constraints. Firstly, we establish a sufficient condition for the existence of a constrained equilibrium point, at which the distributions remain invariant under retraining. Moreover, we propose and analyze two algorithms: repeated constrained optimization and repeated dual ascent. For each algorithm, we provide sufficient conditions for convergence to the constrained equilibrium point. Furthermore, we explore the relationship between the equilibrium point and the optimal point for the constrained decision-dependent optimization problem. Notably, our results encompass previous findings as special cases when the constraints remain fixed. To show the effectiveness of our theoretical analysis, we provide numerical experiments on both a market problem and a dynamic pricing problem for parking based on real-world data.
AB - In this paper we deal with stochastic optimization problems where the data distributions change in response to the decision variables. Traditionally, the study of optimization problems with decision-dependent distributions has assumed either the absence of constraints or fixed constraints. This work considers a more general setting where the constraints can also dynamically adjust in response to changes in the decision variables. Specifically, we consider linear constraints and analyze the effect of decision-dependent distributions in both the objective function and constraints. Firstly, we establish a sufficient condition for the existence of a constrained equilibrium point, at which the distributions remain invariant under retraining. Moreover, we propose and analyze two algorithms: repeated constrained optimization and repeated dual ascent. For each algorithm, we provide sufficient conditions for convergence to the constrained equilibrium point. Furthermore, we explore the relationship between the equilibrium point and the optimal point for the constrained decision-dependent optimization problem. Notably, our results encompass previous findings as special cases when the constraints remain fixed. To show the effectiveness of our theoretical analysis, we provide numerical experiments on both a market problem and a dynamic pricing problem for parking based on real-world data.
KW - Convergence
KW - Electronic mail
KW - Games
KW - Heuristic algorithms
KW - Linear programming
KW - Machine learning algorithms
KW - Optimization
KW - Pricing
KW - Random variables
KW - Training
KW - decision-dependent distributions
KW - Constrained optimization
KW - dual ascent algorithms
UR - http://www.scopus.com/inward/record.url?scp=85217934563&partnerID=8YFLogxK
U2 - 10.1109/TAC.2025.3540441
DO - 10.1109/TAC.2025.3540441
M3 - Journal article
SN - 2334-3303
SP - 1
EP - 14
JO - IEEE Transactions on Automatic Control
JF - IEEE Transactions on Automatic Control
M1 - 10879777
ER -