Comprehensive Learning Polynomial Auto-Regressive Model based on Optimization with Application of Time Series Forecasting

سال انتشار: 1401
نوع سند: مقاله ژورنالی
زبان: انگلیسی
مشاهده: 171

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شناسه ملی سند علمی:

JR_IECO-5-1_005

تاریخ نمایه سازی: 20 تیر 1401

چکیده مقاله:

Nowadays time series analysis is an important challenge in engineering problems. In this paper, we proposed the Comprehensive Learning Polynomial Autoregressive Model (CLPAR) predict linear and nonlinear time series. The presented model is based on the autoregressive (AR) model but developed in a polynomial aspect to make it more robust and accurate. This model predicts future values by learning the weights of the weighted sum of the polynomial combination of previous data. The learning process for the hyperparameters and properties of the model in the training phase is performed by the metaheuristic optimization method. Using this model, we can predict nonlinear time series as well as linear time series. The intended method was implemented on eight standard stationary and non-stationary large-scale real-world datasets. This method outperforms the state-of-the-art methods that use deep learning in seven time series and has better results compared to all other methods in six datasets. Experimental results show the advantage of the model accuracy over other compared methods on the various prediction tasks based on root mean square error (RMSE).

نویسندگان

Nastaran Darjani

Babol Noshirvani University of Technology, Babol, Iran.

Hesam Omranpour

Babol Noshirvani University of Technology, Babol, Iran.

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  • V. Ediger, S. Akar, ARIMA forecasting of primary energydemand by ...
  • Comput. Intell. Syst. ۶ (۲۰۱۳) ۹۵۴–۹۶۸ ...
  • K. Kumar, V.K. Jain, Autoregressive integrated movingaverages (ARIMA) modelling of ...
  • F.-L. Chu, A fractionally integrated autoregressive movingaverage approach to forecasting ...
  • Manag. ۲۹ (۲۰۰۸) ۷۹–۸۸ ...
  • H.-K. Yu, N.-Y. Kim, S.S. Kim, C. Chu, M.-K. Kee,Forecasting ...
  • G. Zheng, J.L. Starck, J.G. Campbell, F. Murtagh,Multiscale transforms for ...
  • Comput. Intell. Financ. ۷ (۱۹۹۹) ...
  • M.D. Chinn, M. LeBlanc, O. Coibion, The predictivecharacteristics of energy ...
  • Heat. Oil (October ۲۰۰۱). UCSC Econ. Work. Pap. (۲۰۰۱) ...
  • C. Morana, A semiparametric approach to short-term oilprice forecasting, Energy ...
  • W.K. Buchanan, P. Hodges, J. Theis, Which way thenatural gas ...
  • M.T. Hagan, S.M. Behr, The time series approach to shortterm ...
  • G.E.P. Box, G.M. Jenkins, Time series analysis: forecastingand control, Holden-Day, ...
  • https://books.google.com/books?id=۱WVHAAAAMAAJ ...
  • O. Renaud, J.-L. Starck, F. Murtagh, Wavelet-basedcombined signal filtering and ...
  • Man, Cybern. Part B. ۳۵ (۲۰۰۵) ۱۲۴۱–۱۲۵۱ ...
  • G. Zhang, B.E. Patuwo, M.Y. Hu, Forecasting with artificialneural networks: ...
  • T.-S. Quah, B. Srinivasan, Improving returns on stockinvestment through neural ...
  • Appl. ۱۷ (۱۹۹۹) ۲۹۵–۳۰۱ ...
  • L.R. Rabiner, A tutorial on hidden Markov models andselected applications ...
  • J. Roman, A. Jameel, Backpropagation and recurrent neuralnetworks in financial ...
  • Sci., ۱۹۹۶: pp. ۴۵۴–۴۶۰ ...
  • Application of Covariance Matrix Adaptation-Evolution Strategy to Optimal Portfolio [مقاله ژورنالی]
  • ۸۱-۹۰, ۲۰۱۹ ...
  • A. Setare, O. Hesam, M. Homayun, Application of a fuzzymethod ...
  • H.-K. Yu, Weighted fuzzy time series models for TAIEXforecasting, Phys. ...
  • K. Huarng, Heuristic models of fuzzy time series forforecasting, Fuzzy ...
  • J.L. Ticknor, A Bayesian regularized artificial neuralnetwork for stock market ...
  • ۴۰ (۲۰۱۳) ۵۵۰۱–۵۵۰۶ ...
  • L. Wang, Y. Zeng, T. Chen, Back propagation neuralnetwork with ...
  • A.B. Geva, ScaleNet-multiscale neural-network architecture for time series prediction, IEEE ...
  • P. Liu, J. Liu, K. Wu, CNN-FCM: System modelingpromotes stability ...
  • doi:۱۰.۱۰۱۶/j.knosys.۲۰۲۰.۱۰۶۰۸۱ ...
  • K. Wu, J. Liu, P. Liu, S. Yang, Time Series ...
  • doi:۱۰.۱۱۰۹/TFUZZ.۲۰۱۹.۲۹۵۶۹۰۴ ...
  • J.G. Carvalho Jr, C.T. Costa Jr, Identification method forfuzzy forecasting ...
  • ۵۰ (۲۰۱۷) ۱۶۶–۱۸۲ ...
  • O.C. Yolcu, F. Alpaslan, Prediction of TAIEX based onhybrid fuzzy ...
  • J.-S. Jang, ANFIS: adaptive-network-based fuzzy inferencesystem, IEEE Trans. Syst. Man. ...
  • Fuzzy Syst. ۲۶ (۲۰۱۸) ۳۳۹۱–۳۴۰۲ ...
  • E. Bas, E. Egrioglu, C.H. Aladag, U. Yolcu,Fuzzy-time-series network used ...
  • H. Akaike, Fitting autoregressive models for prediction,Ann. Inst. Stat. Math. ...
  • S. Mirjalili, S.M. Mirjalili, A. Lewis, Grey Wolf Optimizer,Adv. Eng. ...
  • doi:۱۰.۱۰۱۶/j.advengsoft.۲۰۱۳.۱۲.۰۰۷ ...
  • W. Lu, J. Yang, X. Liu, W. Pedrycz, The modeling ...
  • S. Soltani, On the use of the wavelet decomposition for ...
  • H.S. Lopes, W.R. Weinert, EGIPSYS: an enhanced geneexpression programming approach ...
  • H. Cao, L. Kang, Y. Chen, J. Yu, Evolutionary modeling ...
  • Y. Peng, C. Yuan, X. Qin, J. Huang, Y. Shi, ...
  • R. Majhi, G. Panda, G. Sahoo, A. Panda, A. Choubey,Prediction ...
  • R. Tsaih, Y. Hsu, C.C. Lai, Forecasting S&P ۵۰۰ stockindex ...
  • ۲۳ (۱۹۹۸) ۱۶۱–۱۷۴ ...
  • M. Martens, Measuring and forecasting S&P ۵۰۰index-futures volatility using high-frequency ...
  • Mark. Futur. Options, Other Deriv. Prod. ۲۲ (۲۰۰۲) ۴۹۷–[۴۵] E. ...
  • Yahoo, GSPC historical prices j S&P ۵۰۰ stock, (n.d.) ...
  • https://finance.yahoo.com/quote/%۵EGSPC/history?p=%۵EGSPC (accessed August ۱۶, ۲۰۱۹) ...
  • Monthly milk production: pounds per cow. Jan ۶۲ - Dec ...
  • Monthly closings of the Dow-Jones industrial index, Aug ...
  • ۱۹۶۸ - Aug. ۱۹۸۱, (n.d.) ...
  • https://datamarket.com/data/set/۲۲v۹/monthlyclosings-of-the-dow-jones-industrial-index-aug-۱۹۶۸-aug-%۰A۱۹۸۱!ds=۲۲v۹&display=line (accessed August ۱۶, ۲۰۱۹) ...
  • Monthly critical radio frequencies in Washington, D.C.,May ۱۹۳۴ - April ...
  • https://datamarket.com/data/set/۲۲u۲/monthlycritical-radio ...
  • frequencies-in-washington-dc-may-۱۹۳۴-april-۱۹۵۴-thesefrequencies-reflect-the-highest-radio-frequency-that-can-be ...
  • used-forbroadcasting!ds=۲۲u۲&display=line ...
  • Co۲ (ppm) mauna loa, ۱۹۶۵-۱۹۸۰, (n.d.) ...
  • https://datamarket.com/data/set/۲۲v۱/co۲-ppm-mauna-loa۱۹۶۵-%۰A۱۹۸۰!ds=۲۲v۱&display=line (accessed August۱۶, ۲۰۱۹) ...
  • Monthly Lake Erie levels ۱۹۲۱ - ۱۹۷۰, (n.d.) ...
  • https://datamarket.com/data/set/۲۲pw/monthly-lake-erie-levels-۱۹۲۱-%۰A۱۹۷۰!ds=۲۲pw&display=line (accessedAugust ۱۶, ۲۰۱۹) ...
  • M.C. Mackey, L. Glass, Oscillation and chaos inphysiological control systems, ...
  • H.J. Song, C.Y. Miao, Z.Q. Shen, W. Roel, D.H. Maja, ...
  • Francky, Design of fuzzy cognitive maps using neuralnetworks for predicting ...
  • C.-F. Juang, Y.-W. Tsao, A self-evolving interval type-۲fuzzy neural network ...
  • B.-T. Zhang, P. Ohm, H. Mühlenbein, Evolutionaryinduction of sparse neural ...
  • T. Hastie, R. Tibshirani, J. Friedman, Model assessment andselection, in: ...
  • "The coefficient of determination R-squared is moreinformative than SMAPE, MAE, ...
  • نمایش کامل مراجع