Published September 24, 2025
| Version v1
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VISUAL CORRESPONDENCE-BASED EXPLANATIONS IMPROVE CONVOLUTIONAL NEURAL NETWORKSFOR CLASSIFICATIONOF MAMMOGRAMS
Authors/Creators
- 1. Research Scholar, Institute of Information Technology, Vietnam Academy of Science and Technology, Hanoi, Vietnam
- 2. Associate Professor, Faculty of Information Technology, Thang Long University, Hanoi, Vietnam.
Description
Explainable Artificial Intelligence (XAI) classifications are increasingyimportant in convolutional neural networks for the classification of mammograms. In this paper, we propose a novel architecture of Visual Correspondence Based Explanations that improve Convolutional Neural Networks (cnns) for Classification of Mammograms of self-interpretable image classifiers that first explain, and then predict by harnessing the visual correspondences between a query breast cancer X-Ray image and exemplars. In the evaluation of our proposed models, the k-nearest neighbor (knn) classifier improves upon ResNet-18 on Breast Cancer datasets.
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