LGAIFeb 2, 2021

A Survey on Understanding, Visualizations, and Explanation of Deep Neural Networks

arXiv:2102.01792v140 citations
Originality Synthesis-oriented
AI Analysis

This survey addresses the critical need for transparency and trust in deep learning models, particularly for engineers and researchers developing AI for high-stakes applications like medical diagnosis or control systems.

This paper surveys existing methods for understanding, visualizing, and explaining Deep Neural Networks (DNNs). It highlights the current state of Explainable Artificial Intelligence (XAI) as an emerging field, emphasizing the need for transparency in critical decision-making applications.

Recent advancements in machine learning and signal processing domains have resulted in an extensive surge of interest in Deep Neural Networks (DNNs) due to their unprecedented performance and high accuracy for different and challenging problems of significant engineering importance. However, when such deep learning architectures are utilized for making critical decisions such as the ones that involve human lives (e.g., in control systems and medical applications), it is of paramount importance to understand, trust, and in one word "explain" the argument behind deep models' decisions. In many applications, artificial neural networks (including DNNs) are considered as black-box systems, which do not provide sufficient clue on their internal processing actions. Although some recent efforts have been initiated to explain the behaviors and decisions of deep networks, explainable artificial intelligence (XAI) domain, which aims at reasoning about the behavior and decisions of DNNs, is still in its infancy. The aim of this paper is to provide a comprehensive overview on Understanding, Visualization, and Explanation of the internal and overall behavior of DNNs.

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