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On a Successful Application of Multi-Agent Reinforcement Learning to Operations Research Benchmarks

机译:论多智能体强化学习在运筹学基准中的成功应用

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摘要

In this paper, we suggest and analyze the use of approximate reinforcement learning techniques for a new category of challenging benchmark problems from the field of operations research. We demonstrate that interpreting and solving the task of job-shop scheduling as a multi-agent learning problem is beneficial for obtaining near-optimal solutions and can very well compete with alternative solution approaches. The evaluation of our algorithms focuses on numerous established operations research benchmark problems
机译:在本文中,我们建议并分析了从运营研究领域的挑战基准问题的新类别的近似强化学习技术的使用。我们展示了作为多代理学习问题的求职调度的解释和解决任务是有利于获得近最佳解决方案,并且可以很好地竞争替代解决方案方法。我们的算法评估侧重于众多建立的运营研究基准问题

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