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Scalable robust learning from demonstration with leveraged deep neural networks

机译:通过利用深度神经网络的演示进行可扩展的强大学习

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In this paper, we propose a novel algorithm for learning from demonstration, which can learn a policy function robustly from a large number of demonstrations with mixed qualities. While most of the existing approaches assume that demonstrations are collected from skillful experts, the proposed method alleviates such restrictions by estimating the proficiency level of each demonstration using the proposed leverage optimization. Furthermore, a novel leveraged cost function is proposed to represent a policy function using deep neural networks by reformulating the objective function of leveraged Gaussian process regression using the representer theorem. The proposed method is successfully applied to autonomous track driving tasks, where a large number of demonstrations with mixed qualities are given as training data without labels.
机译:在本文中,我们提出了一种从演示中学习的新算法,该算法可以从大量具有混合质量的演示中稳健地学习策略功能。尽管大多数现有方法都假定演示是从熟练的专家那里收集的,但是所提出的方法通过使用所提出的杠杆优化来估算每个演示的熟练程度,从而减轻了这种限制。此外,提出了一种新颖的杠杆成本函数,通过使用代表定理重新构造杠杆高斯过程回归的目标函数,从而使用深层神经网络来表示策略函数。所提出的方法成功地应用于自动驾驶任务,其中大量具有混合质量的演示作为训练数据而没有标签。

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