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Layer-Wise Relevance Propagation for Neural Networks with Local Renormalization Layers

机译:具有局部重归一化层的神经网络的逐层相关性传播

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Layer-wise relevance propagation is a framework which allows to decompose the prediction of a deep neural network computed over a sample, e.g. an image, down to relevance scores for the single input dimensions of the sample such as subpixels of an image. While this approach can be applied directly to generalized linear mappings, product type non-linearities are not covered. This paper proposes an approach to extend layer-wise relevance propagation to neural networks with local renormalization layers, which is a very common product-type non-linearity in convolutional neural networks. We evaluate the proposed method for local renormalization layers on the CIFAR-10, Imagenet and MIT Places datasets.
机译:逐层相关性传播是一个框架,它可以分解对样本(例如,样本数)计算出的深度神经网络的预测。图像,直到样本的单个输入维度(例如图像的子像素)的相关性得分。尽管此方法可以直接应用于广义线性映射​​,但不涵盖产品类型的非线性。本文提出了一种将分层相关传播扩展到具有局部重归一化层的神经网络的方法,这是卷积神经网络中非常常见的乘积类型非线性。我们评估针对CIFAR-10,Imagenet和MIT Places数据集上的局部重归一化层的拟议方法。

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