Uncertainty in Neural Networks: Approximately Bayesian Ensembling

被引:0
|
作者
Pearce, Tim [1 ]
Leibfried, Felix [2 ]
Brintrup, Alexandra [1 ]
Zaki, Mohamed [1 ]
Neely, Andy [1 ]
机构
[1] Univ Cambridge, Cambridge, England
[2] PROWLER Io, Cambridge, England
基金
英国工程与自然科学研究理事会;
关键词
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Understanding the uncertainty of a neural network's (NN) predictions is essential for many purposes. The Bayesian framework provides a principled approach to this, however applying it to NNs is challenging due to large numbers of parameters and data. Ensembling NNs provides an easily implementable, scalable method for uncertainty quantification, however, it has been criticised for not being Bayesian. This work proposes one modification to the usual process that we argue does result in approximate Bayesian inference; regularising parameters about values drawn from a distribution which can be set equal to the prior. A theoretical analysis of the procedure in a simplified setting suggests the recovered posterior is centred correctly but tends to have underestimated marginal variance, and overestimated correlation. However, two conditions can lead to exact recovery. We argue that these conditions are partially present in NNs. Empirical evaluations demonstrate it has an advantage over standard ensembling, and is competitive with variational methods. Interactive demo: teapearce.github.io
引用
收藏
页码:234 / 243
页数:10
相关论文
共 50 条
  • [31] Bayesian Neural Networks for Uncertainty Analysis of Hydrologic Modeling: A Comparison of Two Schemes
    Zhang, Xuesong
    Zhao, Kaiguang
    WATER RESOURCES MANAGEMENT, 2012, 26 (08) : 2365 - 2382
  • [32] Ensembling Neural Networks for Digital Pathology Images Classification and Segmentation
    Pimkin, Artem
    Makarchuk, Gleb
    Kondratenko, Vladimir
    Pisov, Maxim
    Krivov, Egor
    Belyaev, Mikhail
    IMAGE ANALYSIS AND RECOGNITION (ICIAR 2018), 2018, 10882 : 877 - 886
  • [33] Analytically tractable heteroscedastic uncertainty quantification in Bayesian neural networks for regression tasks
    Deka, Bhargob
    Nguyen, Luong Ha
    Goulet, James-A.
    NEUROCOMPUTING, 2024, 572
  • [34] Bayesian Neural Networks for Uncertainty Analysis of Hydrologic Modeling: A Comparison of Two Schemes
    Xuesong Zhang
    Kaiguang Zhao
    Water Resources Management, 2012, 26 : 2365 - 2382
  • [35] Volcano-Seismic Transfer Learning and Uncertainty Quantification With Bayesian Neural Networks
    Bueno, Angel
    Benitez, Carmen
    De Angelis, Silvio
    Diaz Moreno, Alejandro
    Ibanez, Jesus M.
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2020, 58 (02): : 892 - 902
  • [36] Training minimal uncertainty neural networks by Bayesian theorem and particle swarm optimization
    Wang, Y
    Zhou, CG
    Huang, YX
    Feng, XY
    NEURAL INFORMATION PROCESSING, 2004, 3316 : 579 - 584
  • [37] Uncertainty-aware soft sensor using Bayesian recurrent neural networks
    Lee, Minjung
    Bae, Jinsoo
    Kim, Seoung Bum
    ADVANCED ENGINEERING INFORMATICS, 2021, 50
  • [38] Bayesian neural networks for uncertainty quantification in data-driven materials modeling
    Olivier, Audrey
    Shields, Michael D.
    Graham-Brady, Lori
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 386
  • [39] Uncertainty quantification in multivariable regression for material property prediction with Bayesian neural networks
    Li, Longze
    Chang, Jiang
    Vakanski, Aleksandar
    Wang, Yachun
    Yao, Tiankai
    Xian, Min
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [40] Bayesian neural networks for predicting uncertainty in full-field material response
    Pasparakis, George D.
    Graham-Brady, Lori
    Shields, Michael D.
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2025, 433