2022
DOI: 10.36001/phme.2022.v7i1.3331
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Certainty Groups: A Practical Approach to Distinguish Confidence Levels in Neural Networks

Abstract: Machine Learning (ML), in particular classification with deep neural nets, can be applied to a variety of industrial tasks. It can augment established methods for controlling manufacturing processes such as statistical process control (SPC) to detect non-obvious patterns in high-dimensional input data. However, due to the widespread issue of model miscalibration in neural networks, there is a need for estimating the predictive uncertainty of these models. Many established approaches for uncertainty estimation … Show more

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