A Survey on Applications of Reinforcement Learning in Spatial Resource
Allocation
- URL: http://arxiv.org/abs/2403.03643v2
- Date: Thu, 7 Mar 2024 02:05:28 GMT
- Title: A Survey on Applications of Reinforcement Learning in Spatial Resource
Allocation
- Authors: Di Zhang, Moyang Wang, Joseph Mango, Xiang Li, Xianrui Xu
- Abstract summary: The challenge of spatial resource allocation is pervasive across various domains such as transportation, industry, and daily life.
Traditional algorithms face significant computational pressures, struggling to achieve optimal efficiency and real-time capabilities.
In recent years, there has been a surge in novel methods employing reinforcement learning to tackle spatial resource allocation problems.
- Score: 5.821318691099762
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The challenge of spatial resource allocation is pervasive across various
domains such as transportation, industry, and daily life. As the scale of
real-world issues continues to expand and demands for real-time solutions
increase, traditional algorithms face significant computational pressures,
struggling to achieve optimal efficiency and real-time capabilities. In recent
years, with the escalating computational power of computers, the remarkable
achievements of reinforcement learning in domains like Go and robotics have
demonstrated its robust learning and sequential decision-making capabilities.
Given these advancements, there has been a surge in novel methods employing
reinforcement learning to tackle spatial resource allocation problems. These
methods exhibit advantages such as rapid solution convergence and strong model
generalization abilities, offering a new perspective on resolving spatial
resource allocation problems. Therefore, this paper aims to summarize and
review recent theoretical methods and applied research utilizing reinforcement
learning to address spatial resource allocation problems. It provides a summary
and comprehensive overview of its fundamental principles, related
methodologies, and applied research. Additionally, it highlights several
unresolved issues that urgently require attention in this direction for the
future.
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