Scaling of Class-wise Training Losses for Post-hoc Calibration

06/19/2023
by   Seungjin Jung, et al.
0

The class-wise training losses often diverge as a result of the various levels of intra-class and inter-class appearance variation, and we find that the diverging class-wise training losses cause the uncalibrated prediction with its reliability. To resolve the issue, we propose a new calibration method to synchronize the class-wise training losses. We design a new training loss to alleviate the variance of class-wise training losses by using multiple class-wise scaling factors. Since our framework can compensate the training losses of overfitted classes with those of under-fitted classes, the integrated training loss is preserved, preventing the performance drop even after the model calibration. Furthermore, our method can be easily employed in the post-hoc calibration methods, allowing us to use the pre-trained model as an initial model and reduce the additional computation for model calibration. We validate the proposed framework by employing it in the various post-hoc calibration methods, which generally improves calibration performance while preserving accuracy, and discover through the investigation that our approach performs well with unbalanced datasets and untuned hyperparameters.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/30/2021

Soft Calibration Objectives for Neural Networks

Optimal decision making requires that classifiers produce uncertainty es...
research
06/23/2020

Multi-Class Uncertainty Calibration via Mutual Information Maximization-based Binning

Post-hoc calibration is a common approach for providing high-quality con...
research
03/15/2020

Intra Order-preserving Functions for Calibration of Multi-Class Neural Networks

Predicting calibrated confidence scores for multi-class deep networks is...
research
07/31/2022

Adaptive Temperature Scaling for Robust Calibration of Deep Neural Networks

In this paper, we study the post-hoc calibration of modern neural networ...
research
06/23/2020

Post-hoc Calibration of Neural Networks

Calibration of neural networks is a critical aspect to consider when inc...
research
01/30/2019

On Possibility and Impossibility of Multiclass Classification with Rejection

We investigate the problem of multiclass classification with rejection, ...
research
02/10/2022

Heterogeneous Calibration: A post-hoc model-agnostic framework for improved generalization

We introduce the notion of heterogeneous calibration that applies a post...

Please sign up or login with your details

Forgot password? Click here to reset