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Multi-Head Explainer: A General Framework to Improve Explainability in CNNs and Transformers

MHEX framework integrates explainability and accuracy enhancements for CNNs and Transformers through an Attention Gate, Deep Supervision, and Equivalent Matrix, demonstrating superior performance on medical imaging and text classification tasks.

Year
2025
Venue
arXiv 2025
Authors
2
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arxiv.org/abs/2501.01311v2ARXIV-DEFAULT
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Abstract

In this study, we introduce the Multi-Head Explainer (MHEX), a versatile and modular framework that enhances both the explainability and accuracy of Convolutional Neural Networks (CNNs) and Transformer-based models. MHEX consists of three core components: an Attention Gate that dynamically highlights task-relevant features, Deep Supervision that guides early layers to capture fine-grained details pertinent to the target class, and an Equivalent Matrix that unifies refined local and global representations to generate comprehensive saliency maps. Our approach demonstrates superior compatibility, enabling effortless integration into existing residual networks like ResNet and Transformer architectures such as BERT with minimal modifications. Extensive experiments on benchmark datasets in medical imaging and text classification show that MHEX not only improves classification accuracy but also produces highly interpretable and detailed saliency scores.

Authors

2