Contribution to the study and the design of reinforcement functions

Autores/as

  • Juan Miguel Santos Universidad de Buenos Aires, Argentina

Resumen

The underlying concept in Reinforcement Learning is as simple as it is attractive: to learn by trial and error from the interaction with the environment. This approach allows us to deal with problems where a learning technique searches to improve the performance of the agent (the learner) over time. Reinforcement Learning groups a set of such techniques, and it uses a performance measure based on two types of signals given by a Critic or Reinforcement Function: penalty and reward.

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Publicado

2000-10-19

Cómo citar

Santos, J. M. (2000). Contribution to the study and the design of reinforcement functions. SADIO Electronic Journal of Informatics and Operations Research, 3. https://revistas.unlp.edu.ar/ejs/article/view/17511