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Investigating the Compositional Structure of Deep Neural Networks

Authors :
Alex Graudenzi
Francesco Craighero
Fabio Stella
Marco Antoniotti
Fabrizio Angaroni
Nicosia G.,Ojha V.,La Malfa E.,Jansen G.,Sciacca V.,Pardalos P.,Giuffrida G.,Umeton R.
Craigher, F
Angaroni, F
Graudenzi, A
Stella, F
Antoniotti, M
Source :
Machine Learning, Optimization, and Data Science ISBN: 9783030645823, LOD (1)
Publication Year :
2020
Publisher :
Springer International Publishing, 2020.

Abstract

The current understanding of deep neural networks can only partially explain how input structure, network parameters and optimization algorithms jointly contribute to achieve the strong generalization power that is typically observed in many real-world applications. In order to improve the comprehension and interpretability of deep neural networks, we here introduce a novel theoretical framework based on the compositional structure of piecewise linear activation functions. By defining a direct acyclic graph representing the composition of activation patterns through the network layers, it is possible to characterize the in-stances of the input data with respect to both the predicted label and the specific (linear) transformation used to perform predictions. Preliminary tests on the MNIST dataset show that our method can group input instances with regard to their similarity in the internal representation of the neural network, providing an intuitive measure of input complexity.

Details

ISBN :
978-3-030-64582-3
ISBNs :
9783030645823
Database :
OpenAIRE
Journal :
Machine Learning, Optimization, and Data Science ISBN: 9783030645823, LOD (1)
Accession number :
edsair.doi.dedup.....c116591c127fad3964d07a133039facf