2021
DOI: 10.20944/preprints202105.0780.v1
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Deep ConvNet: Non-Random Weight Initialization for Repeatable Determinism, examined with FSGM

Abstract: This paper presents a non-random weight initialization method in convolutional layers of neural networks examined with the Fast Gradient Sign Method (FSGM) attack. This paper's focus is convolutional layers, and are the layers that have been responsible for better than human performance in image categorization. The proposed method induces earlier learning through the use of striped forms, and as such has less unlearning of the existing random number speckled methods, consistent with the intuitions of Hubel and… Show more

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