Poster
Balancing Two Classifiers via A Simplex ETF Structure for Model Calibration
Jiani Ni · He Zhao · Jintong Gao · Dandan Guo · Hongyuan Zha
In recent years, deep neural networks (DNNs) have demonstrated state-of-the-art performance across various domains. However, despite their success, they often face calibration issues, particularly in safety-critical applications such as autonomous driving and healthcare, where unreliable predictions can have serious consequences. Recent research starts to improve model calibration from the view of classifier. However, the explore about designing the classifier to solve the model calibration problem is insufficient. Let alone most of existing methods ignore the calibration errors arising from underconfidence. In this work, we propose a novel method by Balancing learnable and ETF classifiers to solve the overconfidence or underconfidence problem for model Calibration named BalCAL. By introducing a confidence-tunable module and a dynamic adjustment method, we ensure better alignment between model confidence and its true accuracy. Extensive experimental validation shows that ours significantly improves model calibration performance while maintaining high predictive accuracy, outperforming existing techniques. This provides a novel solution to the calibration challenges commonly encountered in deep learning.
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