In a two-stage Stackelberg game, depending on the leader’s information about the choice of the follower among his optimal responses, one can associate different types of mathematical problems. We present formulations and solution concepts for such problems, together with their possible roles in bilevel optimization, and we illustrate the crucial issues concerning these solution concepts. Then, we discuss which of these issues can be positively or negatively answered and how managing the latter ones by means of two widely used approaches: regularizing the set of optimal responses of the follower, via different types of approximate solutions, or regularizing the follower’s payoff function, via the Tikhonov or the proximal regularizations. The first approach allows to define different kinds of regularized problems whose solutions exist and are stable under perturbations assuming sufficiently general conditions. Moreover, when the original problem has no solutions, we consider suitable regularizations of the second-stage problem, called inner regularizations, which enable to construct a surrogate solution, called viscosity solution, to the original problem. The second approach permits to overcome the non-uniqueness of the follower’s optimal response, by constructing sequences of Stackelberg games with a unique second-stage solution which approximate in some sense the original game, and to select among the solutions by using appropriate constructive methods.

Regularization and Approximation Methods in Stackelberg Games and Bilevel Optimization / Caruso, F.; Lignola, M. B.; Morgan, J.. - 161:(2020), pp. 77-138. [10.1007/978-3-030-52119-6_4]

Regularization and Approximation Methods in Stackelberg Games and Bilevel Optimization

Caruso F.;Lignola M. B.;Morgan J.
2020

Abstract

In a two-stage Stackelberg game, depending on the leader’s information about the choice of the follower among his optimal responses, one can associate different types of mathematical problems. We present formulations and solution concepts for such problems, together with their possible roles in bilevel optimization, and we illustrate the crucial issues concerning these solution concepts. Then, we discuss which of these issues can be positively or negatively answered and how managing the latter ones by means of two widely used approaches: regularizing the set of optimal responses of the follower, via different types of approximate solutions, or regularizing the follower’s payoff function, via the Tikhonov or the proximal regularizations. The first approach allows to define different kinds of regularized problems whose solutions exist and are stable under perturbations assuming sufficiently general conditions. Moreover, when the original problem has no solutions, we consider suitable regularizations of the second-stage problem, called inner regularizations, which enable to construct a surrogate solution, called viscosity solution, to the original problem. The second approach permits to overcome the non-uniqueness of the follower’s optimal response, by constructing sequences of Stackelberg games with a unique second-stage solution which approximate in some sense the original game, and to select among the solutions by using appropriate constructive methods.
2020
978-3-030-52118-9
978-3-030-52119-6
Regularization and Approximation Methods in Stackelberg Games and Bilevel Optimization / Caruso, F.; Lignola, M. B.; Morgan, J.. - 161:(2020), pp. 77-138. [10.1007/978-3-030-52119-6_4]
File in questo prodotto:
Non ci sono file associati a questo prodotto.

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/829151
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 8
  • ???jsp.display-item.citation.isi??? ND
social impact