Learning When to Switch: Adaptive Policy Selection via Reinforcement Learning

arXiv — cs.LGTuesday, December 9, 2025 at 5:00:00 AM
  • A new research study introduces a reinforcement learning technique that enables autonomous agents to learn when to switch between two navigation strategies—systematic exploration and goal-directed pathfinding—improving their performance in complex tasks like maze navigation. The agent adapts its switching behavior based on coverage percentage and distance to the goal, requiring minimal prior knowledge.
  • This development is significant as it enhances the efficiency and effectiveness of autonomous agents in navigating complex environments, potentially leading to advancements in various applications such as robotics, gaming, and automated systems.
  • The study reflects a growing trend in artificial intelligence research focused on adaptive learning and decision-making strategies. As reinforcement learning continues to evolve, the ability to dynamically adjust behaviors based on real-time data is becoming increasingly crucial, paralleling efforts in multi-agent simulations and large language models that aim to optimize interactions and reasoning capabilities.
— via World Pulse Now AI Editorial System

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