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A novel elastic net-based NGBMC(1,n) model with multi-objective optimization for nonlinear time series forecasting

机译:一种新型弹性净基于NGBMC(1,N)模型,具有用于非线性时间序列预测的多目标优化

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摘要

Nonlinear grey Bernoulli multivariate model NGBMC (1, n) is known as a novel forecasting model for nonlinear time series with small samples. However, ill-posed problem would make it less efficient and even cause large errors. In order to improve its generality, a hybrid method combining Elastic Net and multi-objective optimization is introduced in this work. This method effectively solves the essential defect of the ill-posed problem of the NGBMC (1, n) model, making the NGBMC (1, n) model more stable, more reliable, and more interpretable. The parameter identification of the new model uses the alternating direction method of multipliers, and the nonlinear parameter of the model and the regularization parameter of Elastic Net regression are optimized by the multi-objective grey wolf optimizer (MOGWO). Eight numerical cases all show that the use of the Elastic Net regularization method and multi-objective optimization technology can significantly improve the prediction accuracy of the NGBMC (1, n) model for future data. In addition, the hybrid method combing the regularization and optimization strategies proposed in this paper is a general framework for the grey prediction models, which has a high potential in improving the other grey models.(c) 2021 Elsevier B.V. All rights reserved.
机译:非线性灰色Bernoulli多变量模型NGBMC(1,N)被称为具有小型样品的非线性时间序列的新型预测模型。然而,不良问题会使效率较低,甚至会导致大错误。为了改善其一般性,在这项工作中引入了一种结合弹性网和多目标优化的混合方法。该方法有效地解决了NGBMC(1,N)模型的不良问题的基本缺陷,使NGBMC(1,N)模型更稳定,更可靠,更可取的可解释。新模型的参数识别使用乘法器的交替方向方法,并且通过多目标灰狼优化器(MOGWO)优化了模型的非线性参数和弹性网回归的正则化参数。八个数值案例都表明,使用弹性净正则化方法和多目标优化技术可以显着提高NGBMC(1,N)模型的预测准确性,用于将来的数据。此外,梳理本文提出的正则化和优化策略的混合方法是灰色预测模型的一般框架,其在改善其他灰色模型方面具有很大的潜力。(c)2021 Elsevier B.v.保留所有权利。

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