Beyond Accuracy: Reliability and Uncertainty Estimation in Convolutional Neural Networks
arXiv cs.LG / 3/12/2026
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Key Points
- The paper investigates reliability and uncertainty in CNNs by comparing Monte Carlo Dropout, a Bayesian approximation, with Conformal Prediction for uncertainty quantification.
- Experiments on Fashion-MNIST using H-CNN VGG16 and GoogLeNet show VGG16 achieves higher accuracy but tends to be overconfident, whereas GoogLeNet provides better-calibrated uncertainty estimates.
- Conformal Prediction yields statistically valid prediction sets, offering practical value for high-stakes decision-making contexts.
- The study emphasizes evaluating model performance beyond accuracy to build more reliable and trustworthy deep learning systems.
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