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Autonomous learning of features for control: Experiments with embodied and situated agents

机译:控制功能的自主学习:实验和所体现的特工

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The efficacy of evolutionary or reinforcement learning algorithms for continuous control optimization can be enhanced by including an additional neural network dedicated to features extraction trained through self-supervision. In this paper we introduce a method that permits to continue the training of the features extracting network during the training of the control network. We demonstrate that the parallel training of the two networks is crucial in the case of agents that operate on the basis of egocentric observations and that the extraction of features provides an advantage also in problems that do not benefit from dimensionality reduction. Finally, we compare different feature extracting methods and we show that sequence-to-sequence learning outperforms the alternative methods considered in previous studies.
机译:通过包括专用于通过自我监督训练的特征提取的额外神经网络,可以提高进化或增强学习算法的效果。 在本文中,我们介绍一种允许在控制网络训练期间继续提取网络的特征训练的方法。 我们证明,两个网络的并行训练在基于EgoCentric观察的基础上操作的药剂的情况下至关重要,并且在不受维度减少的问题中也提供了优势。 最后,我们比较不同的特征提取方法,我们表明序列到序列学习优于先前研究中考虑的替代方法。

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