AICVHCLGDec 7, 2022

Going Beyond XAI: A Systematic Survey for Explanation-Guided Learning

arXiv:2212.03954v170 citationsh-index: 22
Originality Synthesis-oriented
AI Analysis

This is an incremental survey paper that organizes and evaluates existing EGL techniques for ML engineers seeking to enhance model transparency and performance.

This paper provides a systematic survey of Explanation-Guided Learning (EGL), which addresses the need to steer deep neural networks' reasoning processes using insights from explainable AI to improve model reasonableness and performance. It offers a formal definition, evaluation framework, categorization of existing methods, and comparative experimental studies across domains like computer vision and natural language processing.

As the societal impact of Deep Neural Networks (DNNs) grows, the goals for advancing DNNs become more complex and diverse, ranging from improving a conventional model accuracy metric to infusing advanced human virtues such as fairness, accountability, transparency (FaccT), and unbiasedness. Recently, techniques in Explainable Artificial Intelligence (XAI) are attracting considerable attention, and have tremendously helped Machine Learning (ML) engineers in understanding AI models. However, at the same time, we started to witness the emerging need beyond XAI among AI communities; based on the insights learned from XAI, how can we better empower ML engineers in steering their DNNs so that the model's reasonableness and performance can be improved as intended? This article provides a timely and extensive literature overview of the field Explanation-Guided Learning (EGL), a domain of techniques that steer the DNNs' reasoning process by adding regularization, supervision, or intervention on model explanations. In doing so, we first provide a formal definition of EGL and its general learning paradigm. Secondly, an overview of the key factors for EGL evaluation, as well as summarization and categorization of existing evaluation procedures and metrics for EGL are provided. Finally, the current and potential future application areas and directions of EGL are discussed, and an extensive experimental study is presented aiming at providing comprehensive comparative studies among existing EGL models in various popular application domains, such as Computer Vision (CV) and Natural Language Processing (NLP) domains.

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