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Evidential Network with Conditional Belief Functions for an Adaptive Training in Informed Virtual Environment

机译:带有条件信念功能的证据网络,用于知情虚拟环境中的自适应训练

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Simulators have been used for many years to learn driving, piloting, steering, etc. but they often provide the same training for each learner, no matter his/her performance. In this paper, we present the GULLIVER system, which determines the most appropriate aids to display for learner guiding in a fluvial-navigation training simulator. GULLIVER is a decision-making system based on an evidential network with conditional belief functions. This evidential network allows graphically representing inference rules on uncertain data coming from learner observation. Several sensors and a predictive model are used to collect these data about learner performance. Then the evidential network is used to infer in real time the best guiding to display to learner in informed virtual environment.
机译:模拟器已被用来学习驾驶,飞行员,转向等方面的多年经验,但是无论他们的表现如何,他们通常都会为每个学习者提供相同的培训。在本文中,我们介绍了GULLIVER系统,该系统确定了最合适的辅助工具,以在河流导航培训模拟器中为学习者的指导提供显示。 GULLIVER是基于具有条件置信功能的证据网络的决策系统。该证据网络允许以图形方式表示对来自学习者观察的不确定数据的推理规则。几个传感器和一个预测模型用于收集有关学习者表现的这些数据。然后,证据网络用于实时推断在知情的虚拟环境中向学习者显示的最佳指导。

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