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Orthogonal functional basis neural network for functional approximation

机译:功能逼近正交功能基神经网络

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Subset selection is a well-known technique for generating an efficient and effective neural network structure. The technique has been combined with regularization to improve the generalization performance of a neural network. In this paper, we show an incongruity involving subset selection and regularization. We present an approach to solve this dissonance wherein our subset selection is derived from a combination of functional basis. A more efficient training convergence speed is shown using the new basis which is derived from an 'orthogonal-functional-basis' transformation. With this transformation we propose a new orthogonal functional basis neural network structure which is not only more computationally tractable but also gives better generalization performance. Simulation studies are presented that demonstrate the performance, behavior, and advantages of the proposed network.
机译:子集选择是一种用于产生高效且有效的神经网络结构的众所周知的技术。该技术与正则化结合,以改善神经网络的泛化性能。在本文中,我们展示了涉及子集选择和正规化的不协调。我们提出了一种解决这种不和谐的方法,其中我们的子集选择是从功能基础的组合导出的。使用新的基础显示一种更有效的训练收敛速度,该培训速度从“正交 - 功能基础”转换导出。通过这种转变,我们提出了一种新的正交功能基础神经网络结构,这不仅可以更加计算地进行易行,而且还提供了更好的泛化性能。提出了仿真研究,证明了所提出的网络的性能,行为和优点。

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