Journal Article


CreINNS : credal-set interval neural networks for uncertainty estimation in classification tasks

Abstract

Effective uncertainty estimation is becoming increasingly attractive for enhancing the reliability of neural networks. This work presents a novel approach, termed Credal-Set Interval Neural Networks (CreINNs), for classification. CreINNs retain the fundamental structure of traditional Interval Neural Networks, capturing weight uncertainty through deterministic intervals. CreINNs are designed to predict an upper and a lower probability bound for each class, rather than a single probability value. The probability intervals can define a credal set, facilitating estimating different types of uncertainties associated with predictions. Experiments on standard multiclass and binary classification tasks demonstrate that the proposed CreINNs can achieve superior or comparable quality of uncertainty estimation compared to variational Bayesian Neural Networks (BNNs) and Deep Ensembles. Furthermore, CreINNs significantly reduce the computational complexity of variational BNNs during inference. Moreover, the effective uncertainty quantification of CreINNs is also verified when the input data are intervals.

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Authors

Wang Kaizheng
Shariatmadar, Keivan
Manchingal, Shireen Kudukkil
Cuzzolin, Fabio
Moens, David
Hallez, Hans

Oxford Brookes departments

School of Engineering, Computing and Mathematics

Dates

Year of publication: 2025
Date of RADAR deposit: 2025-01-28


Creative Commons License This work is licensed under a Creative Commons Attribution 4.0 International License


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