Integration of causal inference in the DQN sampling process for classical control problems


연구 분야: Software Development



학회: Neural Computing and Applications


초록

In this study, causal inference is integrated into deep reinforcement learning to enhance sampling in classical control environments. The problem we’re working on is "classical control," where an agent makes decisions to keep systems balanced. With the help of artificial intelligence and causal inference, we have developed a method that adjusts a deep Q-network’s experience memory by adjusting the priority of transitions. According to the agent’s actions, these priorities are based on the magnitude of causal differences. We have applied our methodology to a reference environment in reinforcement learning. In comparison with a deep Q-network based on conventional random sampling, the results indicate significant improvements in performance and learning efficiency. Our study shows that causal inference can be integrated into the sampling process so that experience transitions can be selected more intelligently, resulting in more effective learning for classical control problems. The study contributes to the convergence between artificial intelligence and causal inference, offering new perspectives for the application of reinforcement learning techniques in real-world applications where precise control is essential.


Author Profile
Jairo Ivan Velez Bedoya

Departamento de Ciencias de la Computación Universidad de Zaragoza Mariano Esquillor Gómez s/n 50018 Zaragoza Aragon Spain

Germany
Author Profile
Manuel Gonzalez Bedia

Departamento de Sistemas e Informatica Universidad de Caldas 65 No. 26-10 170001 Manizales Caldas Colombia

Colombia
Author Profile
Luis Fernando Castillo Ossa

Departamento de Ciencias de la Computación Universidad de Zaragoza Mariano Esquillor Gómez s/n 50018 Zaragoza Aragon Spain

Germany

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Germany, Colombia
사이트 Springer
좋아요 수 0

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