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Pseudo orthogonal bases give the optimal generalization capability in neural network learning

机译:伪正交基在神经网络学习中提供了最佳的泛化能力

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Abstract: Pseudo orthogonal bases are a certain type of frames proposed in the engineering field, whose concept is equivalent to a tight frame with frame bound 1 in the frame terminology. This paper shows that pseudo orthogonal bases play an essential role in neural network learning. One of the most important issues in neural network learning is `what training data provides the optimal generalization capability?', which is referred to as active learning in the neural network community. We derive a necessary and sufficient condition of training data to provide the optimal generalization capability in the trigonometric polynomial space, where the concept of pseudo orthogonal bases is essential. By utilizing useful properties of pseudo orthogonal bases, we clarify the mechanism of achieving the optimal generalization.!27
机译:摘要:伪正交基是在工程领域中提出的一种特定类型的框架,其概念等同于框架术语中框架绑定为1的紧框架。本文表明伪正交基在神经网络学习中起着至关重要的作用。神经网络学习中最重要的问题之一是“什么训练数据可以提供最佳的泛化能力?”,这在神经网络社区中被称为主动学习。我们推导了训练数据的必要和充分条件,以在三角多项式空间中提供最佳的泛化能力,其中伪正交基的概念至关重要。通过利用伪正交基的有用属性,我们阐明了实现最佳泛化的机制。!27

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