UAI 2017 - Subject Areas
               
                  When an author submits a paper, they 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 = dynamic Bayesian network, secondary = [application/biology, algorithms/approximate inference] and so on.
               
               
                  For reference, below is the list of subject areas that will appear to authors and reviewers in the CMT conference management system:
               
               
               Algorithms
                
               - Approximate Inference
 
               - Belief Propagation
 
               - Distributed and Parallel
 
               - Exact Inference
 
               - Graph Theory
 
               - Heuristics
 
               - MCMC methods
 
               - Optimization
 
               - Software and Tools
 
               
               
               Application
            
               - Biology
 
               - Databases
 
               - Decision Support
 
               - Diagnosis and Reliability
 
               - Economics
 
               - Education
 
               - General
 
               - Medicine
 
               - Planning and Control
 
               - Privacy and Security
 
               - Robotics
 
               - Sensor Data
 
               - Social Network Analysis
 
               - Speech
 
               - Sustainability and Climate
 
               - Text and Web Data
 
               - User Models
 
               - Vision
 
               
               
               Data
            
               - Big Data
 
               - Multivariate
 
               - Relational
 
               - Spatial
 
               - Temporal or Sequential
 
               
               
               Learning
            
               - Active Learning
 
               - Classification
 
               - Clustering
 
               - Deep Learning
 
               - General
 
               - Nonparametric Bayes
 
               - Online and Anytime Learning
 
               - Parameter Estimation
 
               - Probabilistic Generative Models
 
               - Ranking
 
               - Recommender Systems
 
               - Regression
 
               - Reinforcement Learning
 
               - Relational Learning
 
               - Scalability
 
               - Semi-Supervised Learning
 
               - Structure Learning
 
               - Structured Prediction
 
               - Theory
 
               - Unsupervised
 
               
               
               Methodology
            
               - Bayesian Methods
 
               - Calibration
 
               - Elicitation
 
               - Evaluation
 
               - Human Expertise and Judgement
 
               - Probabilistic Programming
 
               
               
               Models
            
               - Bayesian Networks
 
               - Directed Graphical Models
 
               - Dynamic Bayesian Networks
 
               - Markov Decision Processes
 
               - Mixed Graphical Models
 
               - Topic Models
 
               - Undirected Graphical Models
 
               
               
               Principles
            
               - Causality
 
               - Cognitive Models
 
               - Decision Theory
 
               - Game Theory
 
               - Information Theory
 
               - Probability Theory
 
               - Statistical Theory
 
               
               
               Representation
            
               - Constraints
 
               - Dempster-Shafer
 
               - Fuzzy Logic
 
               - Influence Diagrams
 
               - Non-Probabilistic Frameworks
 
               - Probabilistic