Algebraization and Optimization of Networked Evolutionary Boxed Pig Games with Passive Reward and Punishment
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Publication:5213941
DOI10.1002/asjc.1837zbMath1432.91023OpenAlexW2882988446MaRDI QIDQ5213941
Jian-Jun Wang, Jianli Zhao, Shihua Fu
Publication date: 6 February 2020
Published in: Asian Journal of Control (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.1002/asjc.1837
optimizationsemi-tensor product of matricesnetworked evolutionary gamesboxed pig gamepassive reward and punishment
Games involving graphs (91A43) Evolutionary games (91A22) Miscellaneous topics in calculus of variations and optimal control (49N99)
Related Items (3)
Modeling and optimization for networked evolutionary games with player exit mechanism: semi-tensor product of matrices method ⋮ Algebraic method of simplifying Boolean networks using semi‐tensor product of Matrices ⋮ Stability and stabilization of evolutionary games with time delays via matrix method
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