Abstract
This thesis describes reinforcement learning (RL) methods which can solve sequential decision
making problems by learning from trial and error. Sequential decision making problems are
problems in which an artificial agent interacts with a specific environment through its sensors
(to get inputs) and effectors (to make actions). To measure the goodness of some
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