Towards Interpretable Deep Neural Networks: An Exact Transformation to Multi-Class Multivariate Decision Trees

10 Mar 2020Tung D. NguyenKathryn E. KasmarikHussein A. Abbass

Deep neural networks (DNNs) are commonly labelled as black-boxes lacking interpretability; thus, hindering human's understanding of DNNs' behaviors. A need exists to generate a meaningful sequential logic for the production of a specific output... (read more)

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