RL

Reinforcement Learning - Reinforcement Learning (RL) is a subset of machine learning that enables an artificial system, or agent, to optimize its behavior in a given environment by learning from feedback signals, such as rewards or punishments. The goal is to maximize the cumulative reward received, which is determined by a reward function representing the system's objectives (e.g., answering legal questions, drafting legal documents).

Class Information

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Label (rdfs)
Reinforcement Learning
Preferred Label
RL
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Definition and Examples

Definition
Reinforcement Learning (RL) is a subset of machine learning that enables an artificial system, or agent, to optimize its behavior in a given environment by learning from feedback signals, such as rewards or punishments. The goal is to maximize the cumulative reward received, which is determined by a reward function representing the system's objectives (e.g., answering legal questions, drafting legal documents).
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Deprecated
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