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UAI 2021 : 37th Conference on Uncertainty in Artificial IntelligenceConference Series : Uncertainty in Artificial Intelligence | |||||||||||||
Link: https://www.auai.org/~w-auai/uai2021/ | |||||||||||||
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Call For Papers | |||||||||||||
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.
We invite papers that describe new theory, methodology and/or applications related to machine learning and statistics. We welcome submissions by authors who are new to the UAI conference, or on new and emerging topics. We also encourage submissions on applications, especially those that inspire new methodologies or novel combinations of existing methodologies, provided that some intersection with other UAI topics exists (please see subject areas below). Submitted papers will be reviewed based on their novelty, technical quality, potential impact and clarity of writing. For papers that rely on empirical evaluations, the experimental methods and results should be clear, well executed, and reproducible. Authors are strongly encouraged to make code and data available. Paper submission deadline February 19th, 23:59 UTC, 2021 Author response period April 14th - April 20th, 2021 Author notification May 12th, 2021 Tutorials July 26th, 2021 Main Conference July 27th - July 29th, 2021 Workshops July 30th, 2021 When submitting a paper, you will be asked to select one primary subject area, and up to 5 secondary subject areas from the sets of terms below. The terms have been grouped to provide a somewhat systematic overview of topics relevant to the UAI conference. For example, a paper about a new approximate inference algorithm for dynamic Bayesian network with applications to a problem in biology could select the combination primary = Models: (Dynamic) Bayesian networks, secondary = [Application: Computational Biology, Algorithms: Approximate Inference] and so on. The list of subject areas appears to authors and reviewers in the CMT conference management system. Below you find a list 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 Recommender Systems Reinforcement Learning Relational Learning Representation Learning Semi-Supervised Learning Structure Learning Structured Prediction Unsupervised Learning Models Bandits (Dynamic) Bayesian Networks Generative Models Graphical Models - Directed Graphical Models - Undirected Graphical Models - Mixed Markov Decision Processes Models for Relational Data Neural Networks Probabilistic Circuits Regression Models Spatial and Spatio-Temporal Models Temporal and Sequential Models Topic Models and Latent Variable Models Principles Explainability Causality Computational and Statistical Trade-Offs 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 |
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