AILGMar 21, 2024

A survey on Concept-based Approaches For Model Improvement

arXiv:2403.14566v26 citationsh-index: 2
AI Analysis

It addresses the need for more interpretable AI models for researchers and practitioners, but is incremental as it surveys existing methods.

This paper provides a systematic review and taxonomy of concept-based approaches in deep neural networks, focusing on vision, to improve model interpretability and generalization by explaining decisions in human-understandable terms.

The focus of recent research has shifted from merely improving the metrics based performance of Deep Neural Networks (DNNs) to DNNs which are more interpretable to humans. The field of eXplainable Artificial Intelligence (XAI) has observed various techniques, including saliency-based and concept-based approaches. These approaches explain the model's decisions in simple human understandable terms called Concepts. Concepts are known to be the thinking ground of humans}. Explanations in terms of concepts enable detecting spurious correlations, inherent biases, or clever-hans. With the advent of concept-based explanations, a range of concept representation methods and automatic concept discovery algorithms have been introduced. Some recent works also use concepts for model improvement in terms of interpretability and generalization. We provide a systematic review and taxonomy of various concept representations and their discovery algorithms in DNNs, specifically in vision. We also provide details on concept-based model improvement literature marking the first comprehensive survey of these methods.

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