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Machine Learning Techniques for Autonomous Agents in Military Simulations - Multum in Parvo

机译:军事模拟中的自主代理机器学习技术 - Parvo Multum

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In military simulations, software agents are used to represent individuals, weapon platforms or aggregates thereof. Modeling the behavioral capabilities and limitations of such agents may be time-consuming, requiring extensive interaction with subject matter experts and complicated scripts, but nevertheless resulting in rigid, predictable performance. Autonomous agents that learn desired behaviors themselves using Machine Learning (ML) techniques can overcome these shortcomings. However, such techniques are not yet widely used and perhaps underappreciated. In this context, the latin expression "multum in parvo" ("much in little") denotes that ML agents are able to yield a large variety of behavior, despite their compactness in terms of code and usage of physical memory. This paper attempts to provide some background on applicable Machine Learning solutions and their potential military application. The paper is based on the work of the NATO Research Task Group IST-121 Machine Learning Techniques for Autonomous Computer Generated Entities.
机译:在军事模拟中,软件代理用于代表个人,武器平台或其聚集体。建模此类药剂的行为能力和局限性可能是耗时的,需要与主题专家和复杂脚本进行广泛的互动,但仍导致刚性,可预测的性能。该学会使用机器学习(ML)技术可以克服这些缺点期望的行为本身自治代理。然而,这种技术尚未广泛使用,也许受到低估。在这种情况下,尽管它们在物理内存的代码和使用方面,但是,在Parvo中的拉丁表达“Multum”(“小篇”)表示能够产生大量行为。本文试图为适用的机器学习解决方案及其潜在的军事应用提供一些背景。本文基于北约研究任务组IST-121机器学习技术的自主计算机生成实体的工作。

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