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Machine learning in agent-based stochastic simulation: Inferential theory and evaluation in transportation logistics

机译:基于智能体的随机模拟中的机器学习:运输物流中的推理理论与评估

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摘要

Multiagent-based simulation is an approach to realize stochastic simulation where both the behavior of the modeled multiagent system and dynamic aspects of its environment are implemented with autonomous agents. Such simulation provides an ideal environment for intelligent agents to learn to perform their tasks before being deployed in a real-world environment. The presented research investigates theoretical and practical aspects of learning by autonomous agents within stochastic agent-based simulation. The theoretical work is based on the Inferential Theory of Learning, which describes learning processes from the perspective of a learner's goal as a search through knowledge space. The theory is extended for approximate and probabilistic learning to account for the situations encountered when learning in stochastic environments. Practical aspects are exemplified by two use cases in autonomous logistics: learning predictive models for environment conditions in the future, and learning in the context of evolutionary plan optimization.
机译:基于多主体的仿真是一种实现随机仿真的方法,其中,建模的多主体系统的行为及其环境的动态方面都由自治的主体实现。这种模拟为智能代理提供了理想的环境,使其可以在部署到现实环境中之前学习执行其任务。提出的研究调查了基于随机代理的模拟中自主代理学习的理论和实践方面。该理论工作基于学习的推论理论,该理论从学习者的目标(即在知识空间中进行搜索)的角度描述了学习过程。该理论被扩展用于近似和概率学习,以解决在随机环境中学习时遇到的情况。自治物流中的两个用例举例说明了实践方面:学习未来环境条件的预测模型,以及在进化计划优化的背景下学习。

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