Decision Making in Multiagent Systems: A Survey

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Institute of Electrical and Electronics Engineers Inc.

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Intelligent transport systems, efficient electric grids, and sensor networks for data collection and analysis are some examples of the multiagent systems (MAS) that cooperate to achieve common goals. Decision making is an integral part of intelligent agents and MAS that will allow such systems to accomplish increasingly complex tasks. In this survey, we investigate state-of-the-art work within the past five years on cooperative MAS decision making models, including Markov decision processes, game theory, swarm intelligence, and graph theoretic models. We survey algorithms that result in optimal and suboptimal policies such as reinforcement learning, dynamic programming, evolutionary computing, and neural networks. We also discuss the application of these models to robotics, wireless sensor networks, cognitive radio networks, intelligent transport systems, and smart electric grids. In addition, we define key terms in the area and discuss remaining challenges that include incorporating big data advancements to decision making, developing autonomous, scalable and computationally efficient algorithms, tackling more complex tasks, and developing standardized evaluation metrics. While recent surveys have been published on this topic, we present a broader discussion of related models and applications. Note to Practitioners: Future smart cities will rely on cooperative MAS that make decisions about what actions to perform that will lead to the completion of their tasks. Decision making models and algorithms have been developed and reported in the literature to generate such sequences of actions. These models are based on a wide variety of principles including human decision making and social animal behavior. In this paper, we survey existing decision making models and algorithms that generate optimal and suboptimal sequences of actions. We also discuss some of the remaining challenges faced by the research community before more effective MAS deployment can be achieved in this age of Internet of Things, robotics, and mobile devices. These challenges include developing more scalable and efficient algorithms, utilizing the abundant sensory data available, tackling more complex tasks, and developing evaluation standards for decision making. © 2016 IEEE.

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Cooperation, Decision making models, Game theory, Markov decision process (mdp), Multiagent systems (mass), Swarm intelligence, Behavioral research, Big data, Cognitive radio, Cognitive systems, Complex networks, Computation theory, Decision making, Decision theory, Dynamic programming, Electric power transmission networks, Graph theory, Intelligent agents, Intelligent robots, Intelligent systems, Intelligent vehicle highway systems, Job analysis, Learning algorithms, Markov processes, Particle swarm optimization (pso), Reinforcement learning, Smart power grids, Surveys, Traffic control, Wireless sensor networks, Markov decision processes, Robot kinematics, Robot sensing system, Task analysis, Multi agent systems

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