Citation:
Actor-critic models are a type of reinforcement learning framework that combines two key components: the actor, which selects actions based on policy, and the critic, which evaluates the action taken by estimating value functions. This dual approach allows for more efficient learning in complex environments by enabling the actor to explore different actions while the critic provides feedback on the effectiveness of those actions. The interplay between these components facilitates an adaptive learning process that is crucial in cognitive systems for decision-making and behavior modeling.