4.7 Review

Explaining Deep Neural Networks and Beyond: A Review of Methods and Applications

Journal

PROCEEDINGS OF THE IEEE
Volume 109, Issue 3, Pages 247-278

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JPROC.2021.3060483

Keywords

Black-box models; deep learning; explainable artificial intelligence (XAI); Interpretability; model transparency; neural networks

Funding

  1. Institute of Information & Communications Technology Planning & Evaluation (IITP) - Korea Government [2017-0-00451, 2019-0-00079]
  2. German Ministry for Education and Research (BMBF) [01IS14013A-E, 01GQ1115, 01GQ0850, 01IS18025A, 01IS18037A]
  3. German Research Foundation (DFG) under Grant Math+ [EXC 2046/1, 390685689]

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With the increasing demand for explainable artificial intelligence (XAI) due to the successful usage of machine learning, particularly deep neural networks, this work aims to provide an overview of the field, test interpretability algorithms, and demonstrate successful usage in application scenarios.
With the broader and highly successful usage of machine learning (ML) in industry and the sciences, there has been a growing demand for explainable artificial intelligence (XAI). Interpretability and explanation methods for gaining a better understanding of the problem-solving abilities and strategies of nonlinear ML, in particular, deep neural networks, are, therefore, receiving increased attention. In this work, we aim to: 1) provide a timely overview of this active emerging field, with a focus on post hoc explanations, and explain its theoretical foundations; 2) put interpretability algorithms to a test both from a theory and comparative evaluation perspective using extensive simulations; 3) outline best practice aspects, i.e., how to best include interpretation methods into the standard usage of ML; and 4) demonstrate successful usage of XAI in a representative selection of application scenarios. Finally, we discuss challenges and possible future directions of this exciting foundational field of ML.

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