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Using planning to predict and influence autonomous agents behaviour in a virtual environment for training

机译:使用计划预测和影响虚拟环境中的自主代理行为进行培训

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Virtual environments for training use technical systems simulation and virtual characters to put learners in training situations that emulate genuine work situations. In these environments, maintaining coherence is essential for the learning, whether in the perceived motivations of the characters or the reactions of the technical systems. However, with the complexification of simulated situations, it becomes difficult to maintain this coherence while exerting some control over the scenario, without having to define it explicitly a priori. We present in this paper the SELDON approach, which aims at dynamically adapting the scenario of a virtual environment for training to fit the learner's needs, and focuses on maintaining its coherence. We propose to generate this scenario by using a planning system with two different types of operators — prediction operators, and adjustment operators —, to influence the scenario unfolding in an indirect manner, while respecting the individual agent behaviours.
机译:用于培训的虚拟环境使用技术系统仿真和虚拟字符将学习者放在培训情况下,以模拟真正的工作情况。在这些环境中,维护一致性对于学习至关重要,无论是在人物的感知动机还是技术系统的反应中。然而,随着模拟情况的复杂化,在对这种情况上施加一些控制的同时,难以保持这种相干性,而不必明确定义它的先验。我们在本文中展示了Seldon方法,旨在动态调整虚拟环境的场景,以满足学习者的需求,并专注于保持其连贯性。我们建议通过使用具有两种不同类型的运营商 - 预测运算符和调整运营商的规划系统来生成此方案 - 以间接方式影响方案,同时尊重各种代理行为。

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