TL;DR
This paper extends inverse optimization methods to learn cost functions in generalized Nash equilibrium problems with joint constraints, applying it to multi-player transportation networks and analyzing solution properties.
Contribution
It introduces an extended inverse optimization framework for GNEPs with joint constraints and demonstrates its effectiveness on simulated transportation network problems.
Findings
The model accurately recovers parameters producing similar flow patterns.
The approach is robust across different network configurations and assumptions.
Solutions exhibit both uniqueness and non-uniqueness depending on conditions.
Abstract
As demonstrated by Ratliff et al. (2014), inverse optimization can be used to recover the objective function parameters of players in multi-player Nash games. These games involve the optimization problems of multiple players in which the players can affect each other in their objective functions. In generalized Nash equilibrium problems (GNEPs), a player's set of feasible actions is also impacted by the actions taken by other players in the game; see Facchinei and Kanzow (2010) for more background on this problem. One example of such impact comes in the form of joint/"coupled" constraints as referenced by Rosen (1965), Harker (1991), and Facchinei et al. (2007) which involve other players' variables in the constraints of the feasible region. We extend the framework of Ratliff et al. (2014) to find inverse optimization solutions for the class of GNEPs with joint constraints. The…
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