posted by user: gonzo1453 || 62 views || tracked by 1 users: [display]

WUML 2026 : 3rd Workshop on Uncertainty in Machine Learning

FacebookTwitterLinkedInGoogle

Link: https://sites.google.com/view/wuml2026
 
When Feb 2, 2026 - Feb 4, 2026
Where Tartu, Estonia
Submission Deadline Jan 15, 2026
Categories    machine learning   conformal prediction   model selection   bayesian methods
 

Call For Papers

Motivation and Focus
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 methods

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

weakly supervised learning

Related Resources

Ei/Scopus-ITCC 2026   2026 6th International Conference on Information Technology and Cloud Computing (ITCC 2026)
ICMISI 2026   3rd IEEE International Conference on Machine Intelligence and Smart Innovation
AMLDS 2026   IEEE--2026 2nd International Conference on Advanced Machine Learning and Data Science
ECML PKDD 2026   ECML PKDD 2026 : European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases
Ei/Scopus-CEICE 2026   2026 3rd International Conference on Electrical, Information and Communication Engineering (CEICE 2026)
ICSEng 2026   33rd International Conference on Systems Engineering ICSEng 2026
Ei/Scopus-CMLDS 2026   2026 3rd International Conference on Computing, Machine Learning and Data Science (CMLDS 2026)
ICACI 2026   18th International Conference on Advanced Computational Intelligence
CVIPPR 2026   2026 4th Asia Conference on Computer Vision, Image Processing and Pattern Recognition (CVIPPR 2026)
ICANN 2026   35th International Conference on Artificial Neural Networks