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Uncertain data in learning: challenges and opportunities
Proceedings of the Eleventh Symposium on Conformal and Probabilistic Prediction with Applications, PMLR 179:322-332, 2022.
Abstract
Dealing with uncertain data in statistical estimation problems or in machine learning is not really a new issue. However, such uncertainty has so far mostly been modelled either as sets, being called for instance coarse data or partial labels, or as probability distributions over data values, being called for instance soft labels. Integrating this uncertainty in the learning process can be challenging, but also rewarding, as it can improve both the quality of the made predictions as well as our understanding of the obtained model. Within this setting, rich uncertainty models generalizing both probabilities and sets offer both new challenges and opportunities, and I will summarise some of them in this short note.