Uncertainty Quantification in Deep Learning

被引:0
|
作者
Kong, Lingkai [1 ]
Kamarthi, Harshavardhan [1 ]
Chen, Peng [1 ]
Prakash, B. Aditya [1 ]
Zhang, Chao [1 ]
机构
[1] Georgia Inst Technol, Atlanta, GA 30332 USA
关键词
D O I
10.1145/3580305.3599577
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Deep neural networks (DNNs) have achieved enormous success in a wide range of domains, such as computer vision, natural language processing and scientific areas. However, one key bottleneck of DNNs is that they are ignorant about the uncertainties in their predictions. They can produce wildly wrong predictions without realizing, and can even be confident about their mistakes. Such mistakes can cause misguided decisions-sometimes catastrophic in critical applications, ranging from self-driving cars to cyber security to automatic medical diagnosis. In this tutorial, we present recent advancements in uncertainty quantification for DNNs and their applications across various domains. We first provide an overview of the motivation behind uncertainty quantification, different sources of uncertainty, and evaluation metrics. Then, we delve into several representative uncertainty quantification methods for predictive models, including ensembles, Bayesian neural networks, conformal prediction, and others. We go on to discuss how uncertainty can be utilized for label-efficient learning, continual learning, robust decision-making, and experimental design. Furthermore, we showcase examples of uncertainty-aware DNNs in various domains, such as health, robotics, and scientific machine learning. Finally, we summarize open challenges and future directions in this area.
引用
收藏
页码:5809 / 5810
页数:2
相关论文
共 50 条
  • [41] BAYESIAN DEEP LEARNING FRAMEWORK FOR UNCERTAINTY QUANTIFICATION IN STOCHASTIC PARTIAL DIFFERENTIAL EQUATIONS
    Jung, Jeahan
    Shin, Hyomin
    Choi, Minseok
    [J]. SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2024, 46 (01): : C57 - C76
  • [42] Learning to predict sustainable aviation fuel properties: A deep uncertainty quantification viewpoint
    Oh, Ji-Hun
    Oldani, Anna
    Solecki, Alex
    Lee, Tonghun
    [J]. FUEL, 2024, 356
  • [43] Combining simulations and data with deep learning and uncertainty quantification for advanced energy modeling
    Radaideh, Majdi I.
    Kozlowski, Tomasz
    [J]. INTERNATIONAL JOURNAL OF ENERGY RESEARCH, 2019, 43 (14) : 7866 - 7890
  • [44] Feature extraction using a deep learning algorithm for uncertainty quantification of channelized reservoirs
    Lee, Kyungbook
    Lim, Jungtek
    Ahn, Seongin
    Kim, Jaejun
    [J]. JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2018, 171 : 1007 - 1022
  • [45] A Novel Bayesian Deep Learning Approach to the Downscaling of Wind Speed with Uncertainty Quantification
    Gerges, Firas
    Boufadel, Michel C.
    Bou-Zeid, Elie
    Nassif, Hani
    Wang, Jason T. L.
    [J]. ADVANCES IN KNOWLEDGE DISCOVERY AND DATA MINING, PAKDD 2022, PT III, 2022, 13282 : 55 - 66
  • [46] Uncertainty Quantification in Deep MRI Reconstruction
    Edupuganti, Vineet
    Mardani, Morteza
    Vasanawala, Shreyas
    Pauly, John
    [J]. IEEE TRANSACTIONS ON MEDICAL IMAGING, 2021, 40 (01) : 239 - 250
  • [47] Uncertainty quantification metrics for deep regression
    Lind, Simon Kristoffersson
    Xiong, Ziliang
    Forssen, Per-Erik
    Kruger, Volker
    [J]. PATTERN RECOGNITION LETTERS, 2024, 186 : 91 - 97
  • [48] Click-through Rate Prediction and Uncertainty Quantification Based on Bayesian Deep Learning
    Wang, Xiaowei
    Dong, Hongbin
    [J]. ENTROPY, 2023, 25 (03)
  • [49] A Novel Approach to Uncertainty Quantification in Groundwater Table Modeling by Automated Predictive Deep Learning
    Shahri, Abbas Abbaszadeh
    Shan, Chunling
    Larsson, Stefan
    [J]. NATURAL RESOURCES RESEARCH, 2022, 31 (03) : 1351 - 1373
  • [50] Deep evidential fusion with uncertainty quantification and reliability learning for multimodal medical image segmentation
    Huang, Ling
    Ruan, Su
    Decazes, Pierre
    Denoeux, Thierry
    [J]. INFORMATION FUSION, 2025, 113