
TL;DR
This textbook provides a comprehensive overview of deep reinforcement learning, covering foundational algorithms, applications, and advanced topics, highlighting its recent successes and educational importance.
Contribution
It offers an in-depth, accessible synthesis of deep reinforcement learning methods, including recent advances, for students and researchers in artificial intelligence.
Findings
Deep reinforcement learning has achieved human-level performance in various complex tasks.
The field encompasses both model-free and model-based methods with diverse applications.
Advanced topics include multi-agent, hierarchical, and meta reinforcement learning.
Abstract
Deep reinforcement learning has gathered much attention recently. Impressive results were achieved in activities as diverse as autonomous driving, game playing, molecular recombination, and robotics. In all these fields, computer programs have taught themselves to solve difficult problems. They have learned to fly model helicopters and perform aerobatic manoeuvers such as loops and rolls. In some applications they have even become better than the best humans, such as in Atari, Go, poker and StarCraft. The way in which deep reinforcement learning explores complex environments reminds us of how children learn, by playfully trying out things, getting feedback, and trying again. The computer seems to truly possess aspects of human learning; this goes to the heart of the dream of artificial intelligence. The successes in research have not gone unnoticed by educators, and universities have…
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