Understanding Deep Neural Networks through Input Uncertainties

Published: May 1, 2019
Abstract
Techniques for understanding the functioning of complex machine learning models are becoming increasingly popular, not only to improve the validation process, but also to extract new insights about the data via exploratory analysis. Though a large class of such tools currently exists, most assume that predictions are point estimates and use a sensitivity analysis of these estimates to interpret the model. Using lightweight probabilistic networks...
Paper Details
Title
Understanding Deep Neural Networks through Input Uncertainties
Published Date
May 1, 2019
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