Exploration and value function factorisation in single and multi-agent reinforcement learning
<p>The ability to learn from data is crucial in developing satisfactory solutions to many complex problems. In particular, in the design of intelligent agents that exist and interact with a complex environment in the pursuit of some goal. In this thesis we investigate some bottlenecks that can...
Autor principal: | Rashid, T |
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Altres autors: | Whiteson, S |
Format: | Thesis |
Idioma: | English |
Publicat: |
2021
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Matèries: |
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