Bayesian Neural Network Recent Papers-贝叶斯神经网络相关研究文章

2023-05-16

Bayesian Neural Network Recent Papers-贝叶斯神经网络相关研究文章

  • Methods
    • Variational Inference (VI)
    • Markov Chain Monte Carlo
    • MCMC + VI
    • Ensembling Sampling (ES)
    • Particle Optimization
    • Laplace Approximation
    • Expectation Propgation (EP)
    • Others
  • Theory
    • Gaussian Process
    • Dropout
    • Issues
    • Others
  • Applications
    • Adversarial Defense
    • Bayesian Optmization
    • Hardware Acceleration
    • Regression
    • Implicit Multivariate Prior
    • Classification
    • Recurrent/Convolutional Neural Networks
    • Incremental Learning
    • GAN
    • ODE
    • Interpretable AI
    • Computational Fluid Dynamics
  • Survey
  • Thesis
  • Researcher
  • Events

Methods

Variational Inference (VI)

[1] Variational Bayesian Phylogenetic Inference , ICLR 2019

[2] FUNCTIONAL VARIATIONAL BAYESIAN NEURAL NETWORKS, ICLR 2019

[3] Deterministic Variational Inference for Robust Bayesian Neural Networks , ICLR 2019

[4] Structured Variational Learning of Bayesian Neural Networks with Horseshoe Priors, ICML 2018

[5] Projected BNNs: Avoiding weight-space pathologies by learning latent representations of neural network weights, arXiv 2018

[6] Noisy Natural Gradient as Variational Inference, ICML 2018

[7] Neural Control Variates for Variance Reduction, arXiv 2018

[8] Message Passing Stein Variational Gradient Descent, ICML 2018

[9] KERNEL IMPLICIT VARIATIONAL INFERENCE, ICLR 2018

[10] Gradient Estimators for Implicit Models, ICLR 2018

[11] Fixing Variational Bayes: Deterministic Variational Inference for Bayesian Neural Networks, arXiv 2018

[12] Reducing Reparameterization Gradient Variance, NIPS 2017

[13] Multiplicative Normalizing Flows for Variational Bayesian Neural Networks, ICML 2017

[14] Stein Variational Gradient Descent: A General Purpose Bayesian Inference Algorithm, NIPS 2016

[15] Known Unknowns: Uncertainty Quality in Bayesian Neural Networks, NIPS 2016

[16] Practical Variational Inference for Neural Networks, NIPS 2011

[17] Mixed Variational Inference, arXiv 2019

[18] Radial and Directional Posteriors for Bayesian Neural Networks, arXiv 2019

[19] Unbiased Implicit Variational Inference, arXiv 2019

[20] Semi-implicit variational inference, ICML 2018

[21] Doubly Semi-Implicit Variational Inference, arXiv 2018

[22] Automated Variational Inference in Probabilistic Programming, arXiv 2013

[23] Black Box Variational Inference, arXiv 2014

[24] Stochastic Variational Inference, JMLR 2013

[25] Weight Uncertainty in Neural Networks, ICML 2015

[26] Functional Variational Bayesian Neural Networks

Markov Chain Monte Carlo

[1] Meta-Learning For Stochastic Gradient MCMC, ICLR 2019

[2] Adversarial Distillation of Bayesian Neural Network Posteriors, ICML 2018

[3] Preconditioned Stochastic Gradient Langevin Dynamics for Deep Neural Networks, AAAI 2016

[4] Bayesian Dark Knowledge, NIPS 2015

[5] Stochastic Gradient Hamiltonian Monte Carlo, ICML 2014

[6] Bayesian learning via stochastic gradient langevin dynamics, ICML 2011

[7] Cyclical Stochastic Gradient MCMC for Bayesian Deep Learning, arXiv 2019

[8] Communication-Efficient Stochastic Gradient MCMC for Neural Networks, AAAI 2019

[9] Stochastic Gradient MCMC with Stale Gradients, NIPS 2016

[10] Markov Chain Monte Carlo and Variational Inference: Bridging the Gap, ICML 2015

[11] CPSG-MCMC: Clustering-Based Preprocessing method for Stochastic Gradient MCMC, AISTATS 2017

MCMC + VI

[1] Bridging the Gap between Stochastic Gradient MCMC and Stochastic Optimization, AISTATS 2016

[2] Auxiliary Variational MCMC, ICLR 2019

[3] Variational MCMC, UAI 2011

[4] Variational Hamiltonian Monte Carlo via Score Matching, 2018

Ensembling Sampling (ES)

[1] Uncertainty in Neural Networks: Bayesian Ensembling, arXiv 2019

[2] A Simple Baseline for Bayesian Uncertainty in Deep Learning, arXiv 2019

[3] Fast and Scalable Bayesian Deep Learning by Weight-Perturbation in Adam, ICML 2018

[4] Bayesian Neural Network Ensembles, NIPS 2018

[5] Averaging Weights Leads to Wider Optima and Better Generalization, UAI 2018

[6] Simple and Scalable Predictive Uncertainty Estimation using Deep Ensembles, NIPS 2017

Particle Optimization

[1] Function Space Particle Optimization for Bayesian Neural Networks, ICLR 2019

[2] A Unified Particle-Optimization Framework for Scalable Bayesian Sampling, UAI 2018

[3] Bayesian posterior approximation via greedy particle optimization, arXiv 2019

Laplace Approximation

[1] Online Structured Laplace Approximations For Overcoming Catastrophic Forgetting, arXiv 2018

[2] A Scalable Laplace Approximation for Neural Networks, ICLR 2018

Expectation Propgation (EP)

[1] Assumed Density Filtering Methods for Learning Bayesian Neural Networks, AAAi 2016

[2] Probabilistic Backpropagation for Scalable Learning of Bayesian Neural Networks, ICML 2016

Others

[1] Practical Bayesian Learning of Neural Networks via Adaptive Subgradient Methods, Under Review AISTATS 2019

[2] Learning Structured Weight Uncertainty in Bayesian Neural Networks, AISTATS 2017

Theory

Gaussian Process

[1] Bayesian Deep Convolutional Networks with Many Channels are Gaussian Processes , ICLR 2019

[2] Closed Form Variational Objectives For Bayesian Neural Networks with a Single Hidden Layer, NIPS 2018

[3] Building Bayesian Neural Networks with Blocks: On Structure, Interpretability and Uncertainty, arXiv 2018

[4] Mapping Gaussian Process Priors to Bayesian Neural Networks, NIPS 2017

Dropout

[1] Variational Bayesian dropout: pitfalls and fixes, ICML 2018

[2] Loss-Calibrated Approximate Inference in Bayesian Neural Networks, arXiv 2018

[3] Variational Dropout Sparsifies Deep Neural Networks, ICML 2017

[4] Dropout Inference in Bayesian Neural Networks with Alpha-divergences, ICML 2017

[5] Dropout as a Bayesian Approximation: Representing Model Uncertainty in Deep Learning, ICML 2016

Issues

[1] Overpruning in Variational Bayesian Neural Networks, NIPS 2017

[2] Bayesian neural networks increasingly sparsify their units with depth, arXiv 2018

[3] Accelerated First-order Methods on the Wasserstein Space for Bayesian Inference, arXiv 2018

Others

[1] Statistical Guarantees for the Robustness of Bayesian Neural Networks, arXiv 2019

[2] Performance Measurement for Deep Bayesian Neural Network

Applications

Adversarial Defense

[1] Understanding Measures of Uncertainty for Adversarial Example Detection, UAI 2018

[2] Sufficient Conditions for Robustness to Adversarial Examples: a Theoretical and Empirical Study with Bayesian Neural Networks, ICLR 2019

[3] Adv-BNN: Improved Adversarial Defense through Robust Bayesian Neural Network, ICLR 2019

[4] Predictive Uncertainty Quantification with Compound Density Networks, arXiv 2019

Bayesian Optmization

[1] Learning Curve Prediction with Bayesian Neural Networks, ICLR 2017

[2] Bayesian Optimization with Robust Bayesian Neural Networks, NIPS 2016

Hardware Acceleration

[1] VIBNN Hardware Acceleration of Bayesian Neural Networks, ASPLOS 2018

Regression

[1] Applying SVGD to Bayesian Neural Networks for Cyclical Time-Series Prediction and Inference, NIPS 2018

[2] Informed MCMC with Bayesian Neural Networks for Facial Image Analysis, NIPS 2018

[3] Accurate Uncertainties for Deep Learning Using Calibrated Regression, ICML 2018

[4] Personalizing Gesture Recognition Using Hierarchical Bayesian Neural Networks, CVPR 2017

Implicit Multivariate Prior

[1] Variational Implicit Processes, NIPS 2018

Classification

[1] Uncertainty quantification using Bayesian neural networks in classification: Application to ischemic stroke lesion segmentation, MIDL 2018

[2] Hierarchical Bayesian Neural Networks for Personalized Classification, NIPS 2016

Reinforcement Learning
[1] Randomized Prior Functions for Deep Reinforcement Learning, NIPS 2018

[2] Learning Structural Weight Uncertainty for Sequential Decision-Making, AISTATS 2018

[3] VIME: Variational Information Maximizing Exploration, arXiv 2017

[4] Learning and Policy Search in Stochastic Dynamical Systems with Bayesian Neural Networks, ICLR 2017

[5] Uncertainty Aware Learning from Demonstrations in Multiple Contexts using Bayesian Neural Networks

[6] Stein Variational Policy Gradient, UAI 2018

[7] Variational Inference for Policy Gradient, arXiv 2018

Recurrent/Convolutional Neural Networks

[1] Bayesian Recurrent Neural Networks, arXiv 2018

[2] Bayesian Convolutional Neural Networks with Variational Inference, arXiv 2018

[3] Scalable Bayesian Learning of Recurrent Neural Networks for Language Modeling, ACL 2017

[4] Propagating Uncertainty in Multi-Stage Bayesian Convolutional Neural Networks with Application to Pulmonary Nodule Detection, NIPS 2017

[5] Bayesian Sparsification of Recurrent Neural Networks, arXiv 2017

[6] BAYESIAN CONVOLUTIONAL NEURAL NETWORKS WITH BERNOULLI APPROXIMATE VARIATIONAL INFERENCE, ICLR 2016

[7] Sparse Bayesian Recurrent Neural Networks, ECML PKDD 2015

[8] Learning Weight Uncertainty with SG-MCMC for Shape Classification, CVPR 2016

Incremental Learning

[1] BAYESIAN INCREMENTAL LEARNING FOR DEEP NEURAL NETWORKS, ICLR 2018

GAN

[1] Bayesian GAN, NIPS 2017

ODE

[1] ODE2VAE: Deep generative second order ODEs with Bayesian neural networks, arXiv 2019

Interpretable AI

[1] Interpretable Outcome Prediction with Sparse Bayesian Neural Networks in Intensive Care, arXiv 2019

Computational Fluid Dynamics

[1] Quantifying model form uncertainty in Reynolds-averaged turbulence models with Bayesian deep neural networks, arXiv 2019

Survey

[1] Towards Bayesian Deep Learning A Survey, arXiv 2016

[2] Advances in Variational Inference, arXiv 2017

[3] Variational Inference: A Review for Statisticians, arXiv 2018

Thesis

[1] UNCERTAINTY IN DEEP LEARNING, Yarin Gal 2016

[2] Approximate Inference: New Visions, Yingzhen Li 2018

[3] Towards Better Representations with Deep/Bayes Learning, Chunyuan Li 2018 (slide)

[4] Variational Inference & Deep Learning: A new Synthesis, D.P. Kingma 2017

[5] Bayesian Convolutional Neural Network, Shridhar Kumar 2018

[6] BAYESIAN LEARNING FOR NEURAL NETWORKS, Radford M. Neal 1995

[7] Stochastic Gradient MCMC: Algorithms and Applications, Sungjin Ahn 2015

[8] Large-Scale Bayesian Computation Using Stochastic Gradient Markov Chain Monte Carlo, Jack Baker 2018

Researcher

[1] Max Welling

[2] Zoubin Ghahramani

[3] Radford M. Neal

[4] Yee Whye Teh

[5] Ryan P. Adams

[6] David M. Blei

[7] Jun Zhu

[8] Lawrence Carin

[9] Andrew Gordon Wilson

[10] Roger Grosse

[11] Yarin Gal

[12] Yingzhen Li

[13] Yutian Chen

[14] Christos Louizos

[15] Charles Blundell

[16] Shengyang sun

[17] Jiaxin Shi

[18] Chunyuan Li

[19] Mingyuan Zhou

[20] Sungjin Ahn

[21] Yian Ma

[22] Emily Fox

[23] Qiang Liu

[24] eric nalisnick

Events

[1] NIPS Bayesian Deep Learning Workshop (2016, 2017, 2018)

[2] NIPS Symposium on Advances in Approximate Bayesian Inference (2014 - 2018)

转载github
感谢kumar-shridhar!!!

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