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Learning team-based navigation: a review of deep reinforcement learning techniques for multi-agent pathfinding
by
Younes, Younes Al
, Chung, Jaehoon
, Najjaran, Homayoun
, Fayyad, Jamil
in
Agents
/ Algorithms
/ Artificial Intelligence
/ Complexity
/ Computer Science
/ Critical field (superconductivity)
/ Deep learning
/ Group work in education
/ Indicators
/ Learning
/ Multiagent systems
/ Navigation
/ Reinforcement
/ Robotics
/ Team learning approach in education
2024
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Learning team-based navigation: a review of deep reinforcement learning techniques for multi-agent pathfinding
by
Younes, Younes Al
, Chung, Jaehoon
, Najjaran, Homayoun
, Fayyad, Jamil
in
Agents
/ Algorithms
/ Artificial Intelligence
/ Complexity
/ Computer Science
/ Critical field (superconductivity)
/ Deep learning
/ Group work in education
/ Indicators
/ Learning
/ Multiagent systems
/ Navigation
/ Reinforcement
/ Robotics
/ Team learning approach in education
2024
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Do you wish to request the book?
Learning team-based navigation: a review of deep reinforcement learning techniques for multi-agent pathfinding
by
Younes, Younes Al
, Chung, Jaehoon
, Najjaran, Homayoun
, Fayyad, Jamil
in
Agents
/ Algorithms
/ Artificial Intelligence
/ Complexity
/ Computer Science
/ Critical field (superconductivity)
/ Deep learning
/ Group work in education
/ Indicators
/ Learning
/ Multiagent systems
/ Navigation
/ Reinforcement
/ Robotics
/ Team learning approach in education
2024
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Learning team-based navigation: a review of deep reinforcement learning techniques for multi-agent pathfinding
Journal Article
Learning team-based navigation: a review of deep reinforcement learning techniques for multi-agent pathfinding
2024
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Overview
Multi-agent pathfinding (MAPF) is a critical field in many large-scale robotic applications, often being the fundamental step in multi-agent systems. The increasing complexity of MAPF in complex and crowded environments, however, critically diminishes the effectiveness of existing solutions. In contrast to other studies that have either presented a general overview of the recent advancements in MAPF or extensively reviewed Deep Reinforcement Learning (DRL) within multi-agent system settings independently, our work presented in this review paper focuses on highlighting the integration of DRL-based approaches in MAPF. Moreover, we aim to bridge the current gap in evaluating MAPF solutions by addressing the lack of unified evaluation indicators and providing comprehensive clarification on these indicators. Finally, our paper discusses the potential of model-based DRL as a promising future direction and provides its required foundational understanding to address current challenges in MAPF. Our objective is to assist readers in gaining insight into the current research direction, providing unified indicators for comparing different MAPF algorithms and expanding their knowledge of model-based DRL to address the existing challenges in MAPF.
Publisher
Springer Netherlands,Springer,Springer Nature B.V
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