Constructing prediction intervals to explore uncertainty based on deep neural networks

被引:0
|
作者
Yang J. [1 ]
Chen L. [2 ]
Chen H. [1 ]
Liu J. [3 ,4 ]
Han B. [5 ]
机构
[1] School of Big Data and Statistics, Anhui University, Hefei
[2] School of Marine Science and Technology, Tianjin University, Tianjin
[3] School of Business, Anhui University, Anhui, Hefei
[4] Department of Industrial and Systems Engineering, North Carolina State University, Raleigh, NC
[5] School of Mathematical Science, Anhui University, Hefei
来源
基金
中国国家自然科学基金;
关键词
carbon price; deep neural networks; Prediction interval; uncertainty prediction;
D O I
10.3233/JIFS-237524
中图分类号
学科分类号
摘要
The conventional approaches to constructing Prediction Intervals (PIs) always follow the principle of 'high coverage and narrow width'. However, the deviation information has been largely neglected, making the PIs unsatisfactory. For high-risk forecasting tasks, the cost of forecast failure may be prohibitive. To address this, this work introduces a multi-objective loss function that includes Prediction Interval Accumulation Deviation (PIAD) within the Lower Upper Bound Estimation (LUBE) framework. The proposed model can achieve the goal of 'high coverage, narrow width, and small bias' in PIs, thus minimizing costs even in cases of prediction failure. A salient feature of the LUBE framework is its ability to discern uncertainty without explicit uncertainty labels, where the data uncertainty and model uncertainty are learned by Deep Neural Networks (DNN) and a model ensemble, respectively. The validity of the proposed method is demonstrated through its application to the prediction of carbon prices in China. Compared with conventional uncertainty quantification methods, the improved interval optimization method can achieve narrower PI widths. © 2024 - IOS Press. All rights reserved.
引用
收藏
页码:10441 / 10456
页数:15
相关论文
共 50 条
  • [31] Uncertainty handling using neural network-based prediction intervals for electrical load forecasting
    Quan, Hao
    Srinivasan, Dipti
    Khosravi, Abbas
    ENERGY, 2014, 73 : 916 - 925
  • [32] Constructing prediction intervals for landslide displacement using bootstrapping random vector functional link networks selective ensemble with neural networks switched
    Lian, Cheng
    Zhu, Lingzi
    Zeng, Zhigang
    Su, Yixin
    Yao, Wei
    Tang, Huiming
    NEUROCOMPUTING, 2018, 291 : 1 - 10
  • [33] Prediction of lncRNA functions using deep neural networks based on multiple networks
    Deng, Lei
    Ren, Shengli
    Zhang, Jingpu
    BMC GENOMICS, 2023, 23 (SUPPL 6)
  • [34] Constructing Deep Spiking Neural Networks from Artificial Neural Networks with Knowledge Distillation
    Xu, Qi
    Li, Yaxin
    Shen, Jiangrong
    Liu, Jian K.
    Tang, Huajin
    Pan, Gang
    2023 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, CVPR, 2023, : 7886 - 7895
  • [35] Prediction of lncRNA functions using deep neural networks based on multiple networks
    Lei Deng
    Shengli Ren
    Jingpu Zhang
    BMC Genomics, 23
  • [36] Product Prediction with Deep Neural Networks
    Shijia, E.
    Xiang, Yang
    KNOWLEDGE GRAPH AND SEMANTIC COMPUTING: SEMANTIC, KNOWLEDGE, AND LINKED BIG DATA, 2016, 650 : 243 - 247
  • [37] Relationship between prediction accuracy and uncertainty in compound potency prediction using deep neural networks and control models
    Roth, Jannik P.
    Bajorath, Juergen
    SCIENTIFIC REPORTS, 2024, 14 (01)
  • [38] Aleatory uncertainty quantification based on multi-fidelity deep neural networks
    Li, Zhihui
    Montomoli, Francesco
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2024, 245
  • [39] Uncertainty based active learning with deep neural networks for inertial gait analysis
    Vaith, Alexander
    Taetz, Bertram
    Bleser, Gabriele
    PROCEEDINGS OF 2020 23RD INTERNATIONAL CONFERENCE ON INFORMATION FUSION (FUSION 2020), 2020, : 1058 - 1065
  • [40] Landslide Displacement Prediction With Uncertainty Based on Neural Networks With Random Hidden Weights
    Lian, Cheng
    Zeng, Zhigang
    Yao, Wei
    Tang, Huiming
    Chen, Chun Lung Philip
    IEEE Transactions on Neural Networks and Learning Systems, 2016, 27 (12) : 2683 - 2695