Dynamic Mechanism Design for Repeated Markov Games with Hidden Actions: Computational Approach

被引:0
作者
Clempner, Julio B. [1 ]
机构
[1] Natl Polytech Inst, Inst Politecn Nacl, Escuela Super Fis & Matemat, Sch Phys & Math, Edificio 9 UP Adolfo Lopez Mateos, Mexico City 07730, Mexico
关键词
optimal dynamic mechanism design; hidden actions; Markov games with private information; Bayesian equilibrium; regularization; EQUILIBRIUM; CONTRACTS; LYAPUNOV; NASH;
D O I
10.3390/mca29030046
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
This paper introduces a dynamic mechanism design tailored for uncertain environments where incentive schemes are challenged by the inability to observe players' actions, known as moral hazard. In these scenarios, the system operates as a Markov game where outcomes depend on both the state of payouts and players' actions. Moral hazard and adverse selection further complicate decision-making. The proposed mechanism aims to incentivize players to truthfully reveal their states while maximizing their expected payoffs. This is achieved through players' best-reply strategies, ensuring truthful state revelation despite moral hazard. The revelation principle, a core concept in mechanism design, is applied to models with both moral hazard and adverse selection, facilitating optimal reward structure identification. The research holds significant practical implications, addressing the challenge of designing reward structures for multiplayer Markov games with hidden actions. By utilizing dynamic mechanism design, researchers and practitioners can optimize incentive schemes in complex, uncertain environments affected by moral hazard. To demonstrate the approach, the paper includes a numerical example of solving an oligopoly problem. Oligopolies, with a few dominant market players, exhibit complex dynamics where individual actions impact market outcomes significantly. Using the dynamic mechanism design framework, the paper shows how to construct optimal reward structures that align players' incentives with desirable market outcomes, mitigating moral hazard and adverse selection effects. This framework is crucial for optimizing incentive schemes in multiplayer Markov games, providing a robust approach to handling the intricacies of moral hazard and adverse selection. By leveraging this design, the research contributes to the literature by offering a method to construct effective reward structures even in complex and uncertain environments. The numerical example of oligopolies illustrates the practical application and effectiveness of this dynamic mechanism design.
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页数:15
相关论文
共 21 条
[1]   REPUTATION FOR QUALITY [J].
Board, Simon ;
Meyer-ter-Vehn, Moritz .
ECONOMETRICA, 2013, 81 (06) :2381-2462
[2]  
Bolton P.A., 2005, Contract theory
[3]   Simple contracts under observable and hidden actions [J].
Chen, Bo ;
Chen, Yu ;
Rietzke, David .
ECONOMIC THEORY, 2020, 69 (04) :1023-1047
[4]  
Clempner J.B., 2023, Optimization and Games for Controllable Markov Chains: Numerical Methods with Application to Finance and Engineering
[5]   Analytical Method for Mechanism Design in Partially Observable Markov Games [J].
Clempner, Julio B. ;
Poznyak, Alexander S. .
MATHEMATICS, 2021, 9 (04) :1-15
[6]   A nucleus for Bayesian Partially Observable Markov Games: Joint observer and mechanism design [J].
Clempner, Julio B. ;
Poznyak, Alexander S. .
ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2020, 95
[7]   A Tikhonov regularization parameter approach for solving Lagrange constrained optimization problems [J].
Clempner, Julio B. ;
Poznyak, Alexander S. .
ENGINEERING OPTIMIZATION, 2018, 50 (11) :1996-2012
[8]   On Lyapunov Game Theory Equilibrium: Static and Dynamic Approaches [J].
Clempner, Julio B. .
INTERNATIONAL GAME THEORY REVIEW, 2018, 20 (02)
[9]   A Tikhonov regularized penalty function approach for solving polylinear programming problems [J].
Clempner, Julio B. ;
Poznyak, Alexander S. .
JOURNAL OF COMPUTATIONAL AND APPLIED MATHEMATICS, 2018, 328 :267-286
[10]  
Clempner JB, 2016, ECON COMPUT ECON CYB, V50, P41