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Apparatus and method for linearly approximating deep neural network model

机译:线性逼近深度神经网络模型的装置和方法

摘要

Provided are an apparatus and method for linearly approximating a deep neural network (DNN) model which is a non-linear function. In general, a DNN model shows good performance in generation or classification tasks. However, the DNN fundamentally has non-linear characteristics, and therefore it is difficult to interpret how a result from inputs given to a black box model has been derived. To solve this problem, linear approximation of a DNN is proposed. The method for linearly approximating a DNN model includes 1) converting a neuron constituting a DNN into a polynomial, and 2) classifying the obtained polynomial as a polynomial of input signals and a polynomial of weights.
机译:提供了一种用于线性逼近作为非线性函数的深层神经网络(DNN)模型的设备和方法。通常,DNN模型在生成或分类任务中显示出良好的性能。但是,DNN从根本上具有非线性特性,因此很难解释如何根据输入给黑匣子模型的输入得出结果。为了解决这个问题,提出了DNN的线性近似。用于线性近似DNN模型的方法包括:1)将构成DNN的神经元转换为多项式; 2)将获得的多项式分类为输入信号的多项式和权重的多项式。

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