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Application of the Neural Network Dependability Kit in Real-World Environments

Authors :
Sahu, Amit
Vállez, Noelia
Rodríguez-Bobada, Rosana
Alhaddad, Mohamad
Moured, Omar
Neugschwandtner, Georg
Publication Year :
2020

Abstract

In this paper, we provide a guideline for using the Neural Network Dependability Kit (NNDK) during the development process of NN models, and show how the algorithm is applied in two image classification use cases. The case studies demonstrate the usage of the dependability kit to obtain insights about the NN model and how they informed the development process of the neural network model. After interpreting neural networks via the different metrics available in the NNDK, the developers were able to increase the NNs' accuracy, trust the developed networks, and make them more robust. In addition, we obtained a novel application-oriented technique to provide supporting evidence for an NN's classification result to the user. In the medical image classification use case, it was used to retrieve case images from the training dataset that were similar to the current patient's image and could therefore act as a support for the NN model's decision and aid doctors in interpreting the results.<br />Comment: 10 pages, 7 Figures including 2 appendices Main Content: 5 pages, 1 Figure

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2012.09602
Document Type :
Working Paper