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Reinforcement learning with restrictions on the action set
Mario Bravo
, Mathieu Faure
Research output
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Contribution to journal
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Article
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peer-review
6
Scopus citations
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Keyphrases
Reinforcement Learning
100%
Action Sets
100%
Payoff
50%
Nash Equilibrium
50%
Learning Procedure
50%
Empirical Distribution Function
50%
Adaptive Learning
50%
Potential Game
50%
Payoff Function
50%
Zero Potential
50%
Normal Form Games
50%
Zero-sum Game
50%
Computer Science
Action-Set
100%
Reinforcement Learning
100%
Nash Equilibrium
50%
Payoff Function
50%
Normal Form Game
50%
Adaptive Learning
50%
Mathematics
Repeated Game
100%
Nash Equilibrium
100%
Payoff Function
100%
Potential Games
100%
INIS
learning
100%
distribution
50%
information
50%
equilibrium
50%
Economics, Econometrics and Finance
Nash Equilibrium
100%
Normal-Form Game
100%