Abstract. The problem of learning decision rules for sequential tasks is addressed, focusing on the problem of learning tactical decision rules from a simple flight simulator. The learning method relies on the notion of competition and employs genetic algorithms to search the space of decision policies. Several experiments are presented that address issues arising from differences between the simulation model on which learning occurs and the target environment on which the decision rules are ultimately tested. Key words: sequential decision rules, competition-based learning, genetic algorithm
AbstractDevelopment of stock market is affected by many factors. It is difficult to predict changes ...
Many approaches that model specific intelligent behaviors perform excellently in solving complex opt...
This survey is focused on certain sequential decision-making problems that involve optimizing over p...
. The problem of learning decision rules for sequential tasks is addressed, focusing on the problem ...
This paper summarizes recent research on competition-based learning procedures performed by the Navy...
Applied Game Theory has been criticised for not being able to model real decision making situations....
This paper presents and tests a new learning model of boundedly rational players interacting with na...
AbstractIn this paper we propose a self learning approach which utilizes artificial intelligence met...
This paper reports on recent results using genetic algorithms to learn decision rules for complex ro...
A helpful teacher can significantly improve the learning rate of a learning agent. Teaching algorith...
Interaction among autonomous decision-makers is usually modelled in economics in game-theoretic term...
Genetic Algorithms are used to learn navigation and collision avoidance behaviors for robots. The le...
International audienceMany decision problems have two levels: one for strategic decisions, and an- o...
Abstract—This paper describes an approach based on evo-lutionary algorithms, hierarchical decision r...
This survey is focused on certain sequential decision-making problems that involve optimizing over p...
AbstractDevelopment of stock market is affected by many factors. It is difficult to predict changes ...
Many approaches that model specific intelligent behaviors perform excellently in solving complex opt...
This survey is focused on certain sequential decision-making problems that involve optimizing over p...
. The problem of learning decision rules for sequential tasks is addressed, focusing on the problem ...
This paper summarizes recent research on competition-based learning procedures performed by the Navy...
Applied Game Theory has been criticised for not being able to model real decision making situations....
This paper presents and tests a new learning model of boundedly rational players interacting with na...
AbstractIn this paper we propose a self learning approach which utilizes artificial intelligence met...
This paper reports on recent results using genetic algorithms to learn decision rules for complex ro...
A helpful teacher can significantly improve the learning rate of a learning agent. Teaching algorith...
Interaction among autonomous decision-makers is usually modelled in economics in game-theoretic term...
Genetic Algorithms are used to learn navigation and collision avoidance behaviors for robots. The le...
International audienceMany decision problems have two levels: one for strategic decisions, and an- o...
Abstract—This paper describes an approach based on evo-lutionary algorithms, hierarchical decision r...
This survey is focused on certain sequential decision-making problems that involve optimizing over p...
AbstractDevelopment of stock market is affected by many factors. It is difficult to predict changes ...
Many approaches that model specific intelligent behaviors perform excellently in solving complex opt...
This survey is focused on certain sequential decision-making problems that involve optimizing over p...