Journal Article10.1109/ojcsys.2024.3416768
Solving Decision-Dependent Games by Learning from Feedback
Killian Wood,Ahmed S. Zamzam,Emiliano Dall’Anese +2 more
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About: This article is published in IEEE open journal of control systems. The article was published on 01 Jan 2024. The article focuses on the topics: Computer science.
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Citations
Flexible Optimization for Cyber-Physical and Human Systems
Andrea Simonetto
- 01 Jan 2024
TL;DR: Flexible optimization for cyber-physical and human systems explores ways to make optimization problems more flexible, allowing humans to choose among similar decisions.
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