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WUML 2024 : Workshop on Uncertainty in Machine Learning | |||||||||||||
Link: https://sites.google.com/view/wuml2024/ | |||||||||||||
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Call For Papers | |||||||||||||
The notion of uncertainty is of major importance in machine learning and constitutes a key element of modern machine learning methodology. In recent years, it has gained in importance due to the increasing relevance of machine learning for practical applications, many of which are coming with safety requirements. In this regard, new problems and challenges have been identified by machine learning scholars, which call for new methodological developments. Indeed, while uncertainty has long been perceived as almost synonymous with standard probability and probabilistic predictions, recent research has gone beyond traditional approaches and also leverages more general formalisms and uncertainty calculi. For example, a distinction between different sources and types of uncertainty, such as aleatoric and epistemic uncertainty, turns out to be useful in many machine learning applications. The workshop will pay specific attention to recent developments of this kind.
Aim and Scope The goal of this workshop is to bring together researchers interested in the topic of uncertainty in machine learning. It is meant to provide a place for the discussion of the most recent developments in the modeling, processing, and quantification of uncertainty in machine learning problems, and the exploration of new research directions in this field. Topics of Interest The scope of the workshop covers, but is not limited to, the following topics: adversarial examples aleatoric and epistemic uncertainty Bayesian meyhods belief functions calibration classification with reject option conformal prediction credal classifiers (uncertainty in) deep learning and neural networks ensemble methods imprecise probability likelihood and fiducial inference hypothesis testing model selection and misspecification multi-armed bandits noisy data and outliers online learning out-of-sample prediction out-of-distribution detection uncertainty in optimization performance evaluation prediction intervals probabilistic methods reliable prediction set-valued prediction uncertainty quantification |
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