Feb. 6, 2024, 5:48 a.m. | Kaizheng Wang Keivan Shariatmadar Shireen Kudukkil Manchingal Fabio Cuzzolin David Moens Hans Hallez

cs.LG updates on arXiv.org arxiv.org

Uncertainty estimation is increasingly attractive for improving the reliability of neural networks. In this work, we present novel credal-set interval neural networks (CreINNs) designed for classification tasks. CreINNs preserve the traditional interval neural network structure, capturing weight uncertainty through deterministic intervals, while forecasting credal sets using the mathematical framework of probability intervals. Experimental validations on an out-of-distribution detection benchmark (CIFAR10 vs SVHN) showcase that CreINNs outperform epistemic uncertainty estimation when compared to variational Bayesian neural networks (BNNs) and deep ensembles …

classification credal cs.ai cs.lg forecasting framework interval network networks neural network neural networks novel reliability set tasks through uncertainty work

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