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Method for calculating first-order derivative based feature saliency information in a trained neural network and its application to handwritten digit recognition

机译:训练神经网络中基于一阶导数的特征显着性信息的计算方法及其在手写数字识别中的应用

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摘要

A generalised method is presented for calculating the first-order derivative relationship between inputs and outputs in a trained neural network and the use of these derivatives to perform feature selection. We use a handwritten digit data set as a source for comparing this feature selection method with a standard genetic algorithm feature selection method.
机译:提出了一种通用方法,用于计算经过训练的神经网络中输入和输出之间的一阶导数关系,以及使用这些导数执行特征选择的方法。我们使用手写数字数据集作为比较此特征选择方法和标准遗传算法特征选择方法的来源。

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