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Transformation of neural network weight trajectories on a 2D plane for a learning-type neural network direct controller

机译:学习型神经网络直接控制器在二维平面上神经网络权重轨迹的转换

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摘要

Through a simulation of the tracking method for a neural network weight change on a 2D plane, we noticed that in some cases it was hard for untrained users to observe the neural network weight performance. To overcome this problem, we applied a transformation of the neural network weight trajectories on a 2D plane to the direct controller of a learning-type neural network. The simulation results con firmed that if the trajectory of the neural network weight change on a 2D plane had a simple structure, we could easily determine whether the learning of the neural network had terminated or not. However, if it had a more complex struc ture, we could not make this determination. The proposed transformation of the neural network weight trajectories to one-dimensional values will be useful for such cases.
机译:通过对2D平面上神经网络权重变化的跟踪方法的仿真,我们注意到在某些情况下,未经训练的用户很难观察到神经网络权重的性能。为了克服这个问题,我们将2D平面上神经网络权重轨迹的转换应用于学习型神经网络的直接控制器。仿真结果确认,如果二维平面上神经网络权重变化的轨迹具有简单的结构,我们可以轻松确定神经网络的学习是否已终止。但是,如果它具有更复杂的结构,我们将无法确定。将神经网络权重轨迹转换为一维值的建议方法对于此类情况很有用。

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