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Periodic motions, mapping ordered sequences, and training of dynamic neural networks to generate continuous and discontinuous trajectories

机译:周期性运动,映射有序序列以及动态神经网络的训练以生成连续和不连续的轨迹

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Designing efficient methods for training dynamic neural networks for learning spatio-temporal patterns is of great interest at present. In particular, the "trajectory generation problem" that involves training the network to learn and replicate autonomously a specified time-varying periodic motion has attracted considerable attention. A systematic approach to solve this problem by decomposing the overall task into two sub-tasks, a spatio-temporal sequence assignment and a mapping of ordered sequences, is presented. This decomposition permits the dynamic neural network to be realized as a cascade of a simple recurrent net followed by a non-recurrent one that yields considerable reduction in training complexity. A detailed performance evaluation of the present scheme is given by considering several trajectory generation experiments that highlight the strong points of this approach, which include simplicity and accuracy in training, flexibility to include control parameters in order to modify online the shape of the trajectory learned and the speed of repetition along a cyclic trajectory, and the possibility of learning both continuous and discontinuous trajectory patterns.
机译:目前,设计用于训练动态神经网络以学习时空模式的有效方法非常受关注。特别地,涉及训练网络以自动学习和复制指定的随时间变化的周期性运动的“轨迹产生问题”引起了相当大的关注。提出了一种通过将整个任务分解为两个子任务(时空序列分配和有序序列的映射)来解决此问题的系统方法。这种分解允许将动态神经网络实现为简单递归网络的级联,然后是非递归网络的级联,从而大大降低了训练的复杂性。通过考虑几个轨迹生成实验来对本方案进行详细的性能评估,这些轨迹轨迹凸显了该方法的优点,包括训练的简单性和准确性,包括控制参数的灵活性,以便在线修改所学轨迹的形状以及沿着循环轨迹的重复速度,以及学习连续和不连续轨迹模式的可能性。

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