Título
Enhancing World Models with Specialized Prediction Networks for Reinforcement LearningOtras instituciones
https://ror.org/00ne6sr39Versión
Version publicadaTipo de documento
Contribución a congresoFin de la fecha de embargo
2145-01-01Idioma
InglésDerechos
© 2025 SpringerAcceso
Acceso embargadoVersión de la editorial
https://doi.org/10.1007/978-3-032-08462-0_20Publicado en
Lecture Notes in Computer Science. Hybrid Artificial Intelligent Systems 2025 HAISEditorial
SpringerPalabras clave
Machine LearningReinforcement Learning
World Models
Materia (Tesauro UNESCO)
Control automáticoRobótica
Resumen
Training robots in the real-world using reinforcement learning is both expensive and risky. World Models—a simulated environment that mirrors real-world conditions—have been proved to offer an alterna ... [+]
Training robots in the real-world using reinforcement learning is both expensive and risky. World Models—a simulated environment that mirrors real-world conditions—have been proved to offer an alternative to real-world training. Such simulation-based training not only reduces costs significantly but also reduces the dependency from real-world testing.
While previous studies focus on single-network architectures that predict state, reward, and episode termination as a single output, this research proposes a different approach by creating a structure based on specialized prediction networks for each of the aforementioned elements.
During the experiment, several simulated environments were used. The main results obtained showed that the specialized-network World Models were capable of learning the environment’s dynamics adequately, and that the proposed architecture outperformed single-network configurations by more effectively capturing these dynamics.
Finally, future directions are included on possible ways to enhance World Models efficiency. [-]
Financiador
Gobierno VascoPrograma
Ikur StrategyProyecto
High Performance Supercomputing & Artificial Intelligence (HPC-IA)Colecciones
- Congresos - Ingeniería [561]


















