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Learning Hamiltonian Systems considering System Symmetries in Neural Networks ?

机译:学习汉密尔顿系统考虑神经网络中的系统对称

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Machine learning techniques, especially neural networks, rapidly gain importance in a variety of applications, headed by image analysis and text or speech recognition. Comparably fewer works address the learning of nonlinear dynamical systems — probably because of the challenging task of learning physical laws. To bridge this gap, Hamiltonian Neural Networks have been introduced, which are especially tailored to learning dynamical systems which preserve the Hamiltonian structure. In this contribution, we build on this approach by introducing symmetry-preserving extensions of the Hamiltonian neural networks’ architecture. We discuss discrete symmetry, i.e. periodicity, as well as continuous symmetries in terms of translational or rotational invariances. The proposed learning algorithm provides neural network representations of example systems with improved conservation properties.
机译:机器学习技术,尤其是神经网络,在各种应用中迅速增强,通过图像分析和文本或语音识别来实现。 相当较少的作品解决了非线性动力系统的学习 - 可能是因为学习物理法律的挑战性。 为了弥合这一差距,已经介绍了汉密尔顿的神经网络,这些网络尤其适用于保护汉密尔顿结构的学习动态系统。 在这一贡献中,我们通过引入Hamiltonian神经网络架构的对称保护扩展来构建这种方法。 我们讨论了离散对称,即周期性,以及在翻译或旋转侵犯的侵犯性方面的连续对称。 所提出的学习算法提供了具有改进的节约特性的示例系统的神经网络表示。

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