cs.AI updates on arXiv.org 07月14日 12:08
Interpretability-Aware Pruning for Efficient Medical Image Analysis
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本文介绍了一种基于可解释性的剪枝框架,用于优化深度学习模型在医疗图像分析中的性能,降低模型复杂度,同时保持预测性能和透明度,为实际应用提供支持。

arXiv:2507.08330v1 Announce Type: cross Abstract: Deep learning has driven significant advances in medical image analysis, yet its adoption in clinical practice remains constrained by the large size and lack of transparency in modern models. Advances in interpretability techniques such as DL-Backtrace, Layer-wise Relevance Propagation, and Integrated Gradients make it possible to assess the contribution of individual components within neural networks trained on medical imaging tasks. In this work, we introduce an interpretability-guided pruning framework that reduces model complexity while preserving both predictive performance and transparency. By selectively retaining only the most relevant parts of each layer, our method enables targeted compression that maintains clinically meaningful representations. Experiments across multiple medical image classification benchmarks demonstrate that this approach achieves high compression rates with minimal loss in accuracy, paving the way for lightweight, interpretable models suited for real-world deployment in healthcare settings.

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深度学习 医疗图像分析 可解释性剪枝
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