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Geometric Insights into Focal Loss: Reducing Curvature for Enhanced Model Calibration

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arxiv 2405.00442 v1 pith:LKBGVP72 submitted 2024-05-01 stat.ML cs.AIcs.LG

Geometric Insights into Focal Loss: Reducing Curvature for Enhanced Model Calibration

classification stat.ML cs.AIcs.LG
keywords modellossfocalcalibrationcurvaturebehaviorconfidenceanalysis
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The key factor in implementing machine learning algorithms in decision-making situations is not only the accuracy of the model but also its confidence level. The confidence level of a model in a classification problem is often given by the output vector of a softmax function for convenience. However, these values are known to deviate significantly from the actual expected model confidence. This problem is called model calibration and has been studied extensively. One of the simplest techniques to tackle this task is focal loss, a generalization of cross-entropy by introducing one positive parameter. Although many related studies exist because of the simplicity of the idea and its formalization, the theoretical analysis of its behavior is still insufficient. In this study, our objective is to understand the behavior of focal loss by reinterpreting this function geometrically. Our analysis suggests that focal loss reduces the curvature of the loss surface in training the model. This indicates that curvature may be one of the essential factors in achieving model calibration. We design numerical experiments to support this conjecture to reveal the behavior of focal loss and the relationship between calibration performance and curvature.

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