Uncertainty Quantification of Machine Learning Models
English | PDF (True) | 2025 | 227 Pages | ISBN : 9789465150475 | 4.7 MB
Machine learning models have become significantly more popular in recent years and are increasingly being used in areas where reliability is crucial. Think, for example, of self-driving cars or analyzing CT scans. To have confidence in a model, it is necessary to quantify its uncertainty. Since machine learning models differ from classical models in crucial ways – they typically have more parameters than data points and are slightly different each time they are created – classical techniques for quantifying uncertainty cannot be directly applied. This work provides new contributions to address this problem.
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