Flexible, non-parametric modeling using regularized neural networks

被引:0
|
作者
Oskar Allerbo
Rebecka Jörnsten
机构
[1] University of Gothenburg and Chalmers University of Technology,Mathematical Sciences
来源
Computational Statistics | 2022年 / 37卷
关键词
Additive models; Model selection; Non-parametric regression; Neural networks; Regularization; Adaptive lasso;
D O I
暂无
中图分类号
学科分类号
摘要
Non-parametric, additive models are able to capture complex data dependencies in a flexible, yet interpretable way. However, choosing the format of the additive components often requires non-trivial data exploration. Here, as an alternative, we propose PrAda-net, a one-hidden-layer neural network, trained with proximal gradient descent and adaptive lasso. PrAda-net automatically adjusts the size and architecture of the neural network to reflect the complexity and structure of the data. The compact network obtained by PrAda-net can be translated to additive model components, making it suitable for non-parametric statistical modelling with automatic model selection. We demonstrate PrAda-net on simulated data, where we compare the test error performance, variable importance and variable subset identification properties of PrAda-net to other lasso-based regularization approaches for neural networks. We also apply PrAda-net to the massive U.K. black smoke data set, to demonstrate how PrAda-net can be used to model complex and heterogeneous data with spatial and temporal components. In contrast to classical, statistical non-parametric approaches, PrAda-net requires no preliminary modeling to select the functional forms of the additive components, yet still results in an interpretable model representation.
引用
收藏
页码:2029 / 2047
页数:18
相关论文
共 50 条
  • [1] Flexible, non-parametric modeling using regularized neural networks
    Allerbo, Oskar
    Jornsten, Rebecka
    [J]. COMPUTATIONAL STATISTICS, 2022, 37 (04) : 2029 - 2047
  • [2] Non-Parametric Clustering Using Deep Neural Networks
    Avgerinos, Christos
    Solachidis, Vassilios
    Vretos, Nicholas
    Daras, Petros
    [J]. IEEE ACCESS, 2020, 8 : 153630 - 153640
  • [3] Incorporating noise modeling in dynamic networks using non-parametric models
    Galrinho, Miguel
    Everitt, Niklas
    Hjalmarsson, Hakan
    [J]. IFAC PAPERSONLINE, 2017, 50 (01): : 10568 - 10573
  • [4] Non-parametric classification of esophagus motility by means of neural networks
    Thogersen, C
    Rasmussen, C
    Rutz, K
    Jakobsen, E
    Kruse-Andersen, S
    [J]. METHODS OF INFORMATION IN MEDICINE, 1997, 36 (4-5) : 352 - 355
  • [5] Neural networks as non-parametric classification statistical tools.
    Pitarque, A
    Ruiz, JC
    Roy, JF
    [J]. PSICOTHEMA, 2000, 12 : 459 - 463
  • [6] Non-Parametric Graph Learning for Bayesian Graph Neural Networks
    Pal, Soumyasundar
    Malekmohammadi, Saber
    Regol, Florence
    Zhang, Yingxue
    Xu, Yishi
    Coates, Mark
    [J]. CONFERENCE ON UNCERTAINTY IN ARTIFICIAL INTELLIGENCE (UAI 2020), 2020, 124 : 1318 - 1327
  • [7] Non-parametric regression for networks
    Severn, Katie E.
    Dryden, Ian L.
    Preston, Simon P.
    [J]. STAT, 2021, 10 (01):
  • [8] Neural Survival Clustering: Non-parametric mixture of neural networks for survival clustering
    Jeanselme, Vincent
    Tom, Brian
    Barrett, Jessica
    [J]. CONFERENCE ON HEALTH, INFERENCE, AND LEARNING, VOL 174, 2022, 174 : 92 - 102
  • [9] Modeling Wind Speed Using Parametric and Non-Parametric Distribution Functions
    Ncwane, Siyanda
    Folly, Komla A.
    [J]. IEEE ACCESS, 2021, 9 : 104501 - 104512
  • [10] A method for non-parametric damage detection through the use of neural networks
    Nakamura, M
    Masri, SF
    Chassiakos, AG
    Caughey, TK
    [J]. EARTHQUAKE ENGINEERING & STRUCTURAL DYNAMICS, 1998, 27 (09): : 997 - 1010