NeurIPS 2019 Subject Areas
Authors must choose subject areas (one primary, multiple secondary) when they submit a paper. These subject areas help the program chairs to find the most appropriate reviewers for each submission.
Algorithms
∟ Active Learning
∟ Adaptive Data Analysis
∟ Adversarial Learning
∟ AutoML
∟ Bandit Algorithms
∟ Boosting and Ensemble Methods
∟ Classification
∟ Clustering
∟ Collaborative Filtering
∟ Components Analysis (e.g., CCA, ICA, LDA, PCA)
∟ Density Estimation
∟ Few-Shot Learning
∟ Image Segmentation
∟ Kernel Methods
∟ Large Margin Methods
∟ Large Scale Learning
∟ Meta-Learning
∟ Metric Learning
∟ Missing Data
∟ Model Selection and Structure Learning
∟ Multitask and Transfer Learning
∟ Nonlinear Dimensionality Reduction and Manifold Learning
∟ Online Learning
∟ Ranking and Preference Learning
∟ Regression
∟ Relational Learning
∟ Representation Learning
∟ Semi-Supervised Learning
∟ Similarity and Distance Learning
∟ Sparse Coding and Dimensionality Expansion
∟ Sparsity and Compressed Sensing
∟ Spectral Methods
∟ Stochastic Methods
∟ Structured Prediction
∟ Uncertainty Estimation
∟ Unsupervised Learning
Applications
∟ Activity and Event Recognition
∟ Audio and Speech Processing
∟ Body Pose, Face, and Gesture Analysis
∟ Communication- or Memory-Bounded Learning
∟ Computational Biology and Bioinformatics
∟ Computational Photography
∟ Computational Social Science
∟ Computer Vision
∟ Denoising
∟ Dialog- or Communication-Based Learning
∟ Fairness, Accountability, and Transparency
∟ Game Playing
∟ Hardware and Systems
∟ Health
∟ Image Segmentation
∟ Information Retrieval
∟ Matrix and Tensor Factorization
∟ Motor Control
∟ Music Modeling and Analysis
∟ Natural Language Processing
∟ Network Analysis
∟ Object Detection
∟ Object Recognition
∟ Privacy, Anonymity, and Security
∟ Program Understanding and Generation
∟ Quantitative Finance and Econometrics
∟ Recommender Systems
∟ Robotics
∟ Signal Processing
∟ Speech Recognition
∟ Sustainability
∟ Time Series Analysis
∟ Tracking and Motion in Video
∟ Video Analysis
∟ Visual Question Answering
∟ Visual Scene Analysis and Interpretation
∟ Web Applications and Internet Data
Data, Challenges, Implementations, and Software
∟ Benchmarks
∟ Data Sets or Data Repositories
∟ Software Toolkits
∟ Virtual Environments
Deep Learning
∟ Adversarial Networks
∟ Attention Models
∟ Biologically Plausible Deep Networks
∟ CNN Architectures
∟ Deep Autoencoders
∟ Efficient Inference Methods
∟ Efficient Training Methods
∟ Embedding Approaches
∟ Generative Models
∟ Interaction-Based Deep Networks
∟ Memory-Augmented Neural Networks
∟ Optimization for Deep Networks
∟ Predictive Models
∟ Recurrent Networks
∟ Supervised Deep Networks
∟ Visualization or Exposition Techniques for Deep Networks
Neuroscience and Cognitive Science
∟ Auditory Perception
∟ Brain Imaging
∟ Brain Mapping
∟ Brain Segmentation
∟ Brain--Computer Interfaces and Neural Prostheses
∟ Cognitive Science
∟ Connectomics
∟ Human or Animal Learning
∟ Language for Cognitive Science
∟ Memory
∟ Neural Coding
∟ Neuropsychology
∟ Neuroscience
∟ Perception
∟ Plasticity and Adaptation
∟ Problem Solving
∟ Reasoning
∟ Spike Train Generation
∟ Synaptic Modulation
∟ Visual Perception
Optimization
∟ Combinatorial Optimization
∟ Convex Optimization
∟ Non-Convex Optimization
∟ Submodular Optimization
∟ Stochastic Optimization
Probabilistic Methods
∟ Bayesian Nonparametrics
∟ Bayesian Theory
∟ Belief Propagation
∟ Causal Inference
∟ Distributed Inference
∟ Gaussian Processes
∟ Graphical Models
∟ Hierarchical Models
∟ Latent Variable Models
∟ MCMC
∟ Topic Models
∟ Variational Inference
Reinforcement Learning and Planning
∟ Decision and Control
∟ Exploration
∟ Hierarchical RL
∟ Markov Decision Processes
∟ Model-Based RL
∟ Multi-Agent RL
∟ Navigation
∟ Planning
∟ Reinforcement Learning
Theory
∟ Computational Complexity
∟ Control Theory
∟ Frequentist Statistics
∟ Game Theory and Computational Economics
∟ Hardness of Learning and Approximations
∟ Information Theory
∟ Large Deviations and Asymptotic Analysis
∟ Learning Theory
∟ Regularization
∟ Spaces of Functions and Kernels
∟ Statistical Physics of Learning