Non-linear shrinking of linear model errors

被引:4
作者
Helin, Runar [1 ]
Indahl, Ulf [1 ]
Tomic, Oliver [1 ]
Liland, Kristian Hovde [1 ]
机构
[1] Norwegian Univ Life Sci, Fac Sci & Technol, As, Norway
关键词
Residual modelling; Hybrid model; Neural network; Interpretation; Deep learning; PLSR; CONVOLUTIONAL NEURAL-NETWORKS; REGRESSION; PREDICTION;
D O I
10.1016/j.aca.2023.341147
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Background: Artificial neural networks (ANNs) can be a powerful tool for spectroscopic data analysis. Their ability to detect and model complex relations in the data may lead to outstanding predictive capabilities, but the predictions themselves are difficult to interpret due to the lack of understanding of the black box ANN models. ANNs and linear methods can be combined by first fitting a linear model to the data followed by a non-linear fitting of the linear model residuals using an ANN. This paper explores the use of residual modelling in highdimensional data using modern neural network architectures. Results: By combining linear- and ANN modelling, we demonstrate that it is possible to achieve both good model performance while retaining interpretations from the linear part of the model. The proposed residual modelling approach is evaluated on four high-dimensional datasets, representing two regression and two classification problems. Additionally, a demonstration of possible interpretation techniques are included for all datasets. The study concludes that if the modelling problem contains sufficiently complex data (i.e., non-linearities), the residual modelling can in fact improve the performance of a linear model and achieve similar performance as pure ANN models while retaining valuable interpretations for a large proportion of the variance accounted for. Significance and novelty: The paper presents a residual modelling scheme using modern neural network architectures. Furthermore, two novel extensions of residual modelling for classification tasks are proposed. The study is seen as a step towards explainable AI, with the aim of making data modelling using artificial neural networks more transparent.
引用
收藏
页数:11
相关论文
共 38 条
  • [1] Abadi M, 2016, PROCEEDINGS OF OSDI'16: 12TH USENIX SYMPOSIUM ON OPERATING SYSTEMS DESIGN AND IMPLEMENTATION, P265
  • [2] Convolutional neural networks for vibrational spectroscopic data analysis
    Acquarelli, Jacopo
    van Laarhoven, Twan
    Gerretzen, Jan
    Tran, Thanh N.
    Buydens, Lutgarde M. C.
    Marchiori, Elena
    [J]. ANALYTICA CHIMICA ACTA, 2017, 954 : 22 - 31
  • [3] Andersson G, 1996, J CHEMOMETR, V10, P605
  • [4] RETRACTED: A Hybrid ARIMA and Neural Network Model for Short-Term Price Forecasting in Deregulated Market (Retracted Article)
    Areekul, Phatchakorn
    Senjyu, Tomonobu
    Toyama, Hirofumi
    Yona, Atsushi
    [J]. IEEE TRANSACTIONS ON POWER SYSTEMS, 2010, 25 (01) : 524 - 530
  • [5] Blazhko Uladzislau, 2021, CHEMOMETR INTELL LAB, V215
  • [6] Deep Learning for Tomato Diseases: Classification and Symptoms Visualization
    Brahimi, Mohammed
    Boukhalfa, Kamel
    Moussaoui, Abdelouahab
    [J]. APPLIED ARTIFICIAL INTELLIGENCE, 2017, 31 (04) : 299 - 315
  • [7] Bro R, 1996, J CHEMOMETR, V10, P47, DOI 10.1002/(SICI)1099-128X(199601)10:1<47::AID-CEM400>3.0.CO
  • [8] 2-C
  • [9] Modern practical convolutional neural networks for multivariate regression: Applications to NIR calibration
    Cui, Chenhao
    Fearn, Tom
    [J]. CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2018, 182 : 9 - 20
  • [10] Dara Suresh, 2018, 2018 Second International Conference on Electronics, Communication and Aerospace Technology (ICECA), P1795, DOI 10.1109/ICECA.2018.8474912