2022
DOI: 10.3390/s22031032
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Game Theory in Defence Applications: A Review

Abstract: This paper presents a succinct review of attempts in the literature to use game theory to model decision-making scenarios relevant to defence applications. Game theory has been proven as a very effective tool in modelling the decision-making processes of intelligent agents, entities, and players. It has been used to model scenarios from diverse fields such as economics, evolutionary biology, and computer science. In defence applications, there is often a need to model and predict the actions of hostile actors,… Show more

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Cited by 46 publications
(23 citation statements)
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“…A review of the available literature on the use of game theory in defense applications is provided in Ref. [ 31 ]. It discusses previous papers on game theory in detail and classifies them based on different criteria.…”
Section: Brief History and Literature Reviewmentioning
confidence: 99%
“…A review of the available literature on the use of game theory in defense applications is provided in Ref. [ 31 ]. It discusses previous papers on game theory in detail and classifies them based on different criteria.…”
Section: Brief History and Literature Reviewmentioning
confidence: 99%
“…Game theory has basic concepts for completing a competition, including the number of players, game values, and game strategies (Ho, Rajagopalan, Skvortsov, Arulampalam, & Piraveenan, 2022). This theory provides a language for formulating, structuring, analyzing and understanding strategic scenarios and is used for strategy selection.…”
Section: Game Theorymentioning
confidence: 99%
“…In this study, the concept of 2person games is used. So that the general form of the pay off matrix used is like matrix (1) below (Ho, Rajagopalan, Skvortsov, Arulampalam, & Piraveenan, 2022):…”
Section: Game Theorymentioning
confidence: 99%
“…As the competitive feature is ubiquitous in a large number of real-world applications, adversarial games have been extensively investigated until now [13]- [18]. For example, the authors in [13] provided a broad survey of technical advances in Stackelberg security games (SSG) in 2018, the authors in [14] reviewed some main Nash equilibrium (NE) computing algorithms for extensive-form games with imperfect information based on counterfactual regret minimization (CFR) methods, the authors in [15] reviewed a combined use of game theory and optimization algorithms along with a new categorization for researches conducted in this area, the authors in [16] reviewed distributed online optimization, federated optimization from the perspective of privacy-preserving mechanisms, and cooperative/non-cooperative games from two facets, i.e., minimizing global costs and minimizing individual costs, and the authors in [17] surveyed recent advances of decentralized online learning, including decentralized online optimization and online game, from the perspectives of problem classifications, performance metrics, state-of-the-art performance results, and potential research directions in future.…”
Section: Introductionmentioning
confidence: 99%
“…For example, the authors in [13] provided a broad survey of technical advances in Stackelberg security games (SSG) in 2018, the authors in [14] reviewed some main Nash equilibrium (NE) computing algorithms for extensive-form games with imperfect information based on counterfactual regret minimization (CFR) methods, the authors in [15] reviewed a combined use of game theory and optimization algorithms along with a new categorization for researches conducted in this area, the authors in [16] reviewed distributed online optimization, federated optimization from the perspective of privacy-preserving mechanisms, and cooperative/non-cooperative games from two facets, i.e., minimizing global costs and minimizing individual costs, and the authors in [17] surveyed recent advances of decentralized online learning, including decentralized online optimization and online game, from the perspectives of problem classifications, performance metrics, state-of-the-art performance results, and potential research directions in future. Additionally, in consideration of the importance of game theory in national defense, some reviews of game theory in defense applications were succinctly provided in [18], [19], and a survey of defensive deception based on game theory and machine learning (ML) approaches was presented in [20]. Nonetheless, a thorough overview for adversarial games from the perspectives of the basic models' knowledge, equilibrium concepts, optimal strategy seeking techniques, research frontiers, and prevailing algorithms is still lacking.…”
Section: Introductionmentioning
confidence: 99%