42nd Conference on Uncertainty in Artificial Intelligence

Event Dates

Aug 17, 2026 - Aug 21, 2026

Location

Amsterdam, The Netherlands

Submission Deadline

Feb 25, 2026

The Conference on Uncertainty in Artificial Intelligence (UAI) is one of the premier international conferences on research related to learning and reasoning in the presence of uncertainty. The conference has been held every year since 1985. The upcoming 42nd edition (UAI 2026) will be an in-person conference taking place in Amsterdam, The Netherlands, on these dates:

Tutorials: Monday, August, 17th, 2026

Main conference: Tuesday, August 18th to Thursday, August 20th, 2026

Workshops: Friday, August, 21st, 2026

We invite papers that describe novel theory, methodology and applications related to artificial intelligence, machine learning and statistics. Papers will be assessed in a rigorous double-blind peer-review process, based on the criteria of technical correctness, novelty, whether claims are backed up convincingly, and clarity of writing. Authors are strongly encouraged to make code and data available.

All accepted papers will be presented in poster sessions and spotlight presentations (physically or remotely). Selected papers will have longer presentations. All accepted papers will be published in a volume of Proceedings of Machine Learning Research (PMLR).

Below you find a non-exhaustive list of relevant topics for your reference.

Algorithms

Approximate Inference

Bayesian Methods

Belief Propagation

Exact Inference

Kernel Methods

Missing Data Handling

Monte Carlo Methods

Optimization – Combinatorial

Optimization – Convex

Optimization – Discrete

Optimization – Non-Convex

Probabilistic Programming

Randomized Algorithms

Spectral Methods

Variational Methods

Applications

Cognitive Science

Computational Biology

Computer Vision

Crowdsourcing

Earth System Science

Education

Forensic Science

Healthcare

Natural Language Processing

Neuroscience

Planning and Control

Privacy and Security

Robotics

Social Good

Sustainability and Climate Science

Text and Web Data

Learning

Active Learning

Adversarial Learning

Causal Learning

Classification

Clustering

Compressed Sensing and Dictionary Learning

Deep Learning

Density Estimation

Dimensionality Reduction

Ensemble Learning

Feature Selection

Hashing and Encoding

Multitask and Transfer Learning

Online and Anytime Learning

Policy Optimization and Policy Learning

Ranking

Reinforcement Learning and Bandits

Relational Learning

Representation Learning

Semi-Supervised Learning

Structure Learning

Structured Prediction

Unsupervised Learning

Models

Foundation Models

Generative Models

Graphical Models

Models for Relational Data

Neural Networks

Probabilistic Circuits

Regression Models

Spatial, Temporal and Spatio-Temporal Models

Topic Models and Latent Variable Models

Principles

Causality

Computational and Statistical Trade-Offs

Explainability

Fairness

Privacy

Reliability

Robustness

(Structured) Sparsity

Representation

Constraints

Dempster-Shafer

(Description) Logics

Imprecise Probabilities

Influence Diagrams

Knowledge Representation Languages

Theory

Computational Complexity

Control Theory

Decision Theory

Game Theory

Information Theory

Learning Theory

Probability Theory

Statistical Theory