Aligned with
This conference contributes to global sustainability by aligning its research discussions and academic sessions with key United Nations Sustainable Development Goals. It fosters knowledge exchange, innovation, and collaborative engagement.
This track focuses on the latest developments in reinforcement learning algorithms, including policy optimization and Q-learning techniques. Researchers are invited to present innovative approaches that enhance the efficiency and effectiveness of these algorithms.
This session will explore the application of deep reinforcement learning in various domains, including robotics and autonomous systems. Participants will discuss case studies and methodologies that demonstrate the practical impact of deep learning techniques in reinforcement learning.
This track examines the dynamics of multi-agent systems and their role in reinforcement learning. Contributions should focus on collaborative learning strategies, communication protocols, and the optimization of agent interactions.
This session addresses the critical exploration-exploitation tradeoff in reinforcement learning frameworks. Researchers are encouraged to present novel strategies and theoretical insights that balance exploration and exploitation effectively.
This track highlights advancements in model-free learning methods within reinforcement learning paradigms. Submissions should detail innovative techniques that improve learning efficiency without relying on explicit models of the environment.
This session delves into the application of Markov decision processes in artificial intelligence and data science. Papers should explore theoretical advancements and practical implementations that leverage MDPs for decision-making.
This track focuses on the intersection of robotics and reinforcement learning, showcasing applications that enhance robotic capabilities through learning. Contributions should highlight real-world implementations and experimental results.
This session investigates adaptive decision-making strategies in uncertain environments using reinforcement learning. Researchers are invited to present frameworks that enable robust decision-making under varying conditions.
This track explores recent innovations in temporal difference learning methods within reinforcement learning. Participants should discuss new algorithms and their implications for improving learning performance.
This session focuses on the role of simulation-based learning in reinforcement learning research. Contributions should emphasize methodologies that utilize simulations to enhance learning outcomes and decision-making processes.
This track examines various reward-based learning strategies in reinforcement learning frameworks. Researchers are encouraged to present novel approaches that optimize reward structures for improved learning efficiency.
Due to heightened regional tensions and travel risks, the conference may be conducted in virtual-only mode. Updates regarding participation format will be communicated in advance.