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Fuzzy-time-series network used to forecast linear and nonlinear time series

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Fuzzy-time-series network used to forecast linear and nonlinear time series. / Bas, Eren; Egrioglu, Erol; Aladag, Cagdas Hakan et al.
In: Applied Intelligence, Vol. 43, No. 2, 27.09.2015, p. 343-355.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Bas, E, Egrioglu, E, Aladag, CH & Yolcu, U 2015, 'Fuzzy-time-series network used to forecast linear and nonlinear time series', Applied Intelligence, vol. 43, no. 2, pp. 343-355. https://doi.org/10.1007/s10489-015-0647-0

APA

Vancouver

Bas E, Egrioglu E, Aladag CH, Yolcu U. Fuzzy-time-series network used to forecast linear and nonlinear time series. Applied Intelligence. 2015 Sept 27;43(2):343-355. doi: 10.1007/s10489-015-0647-0

Author

Bas, Eren ; Egrioglu, Erol ; Aladag, Cagdas Hakan et al. / Fuzzy-time-series network used to forecast linear and nonlinear time series. In: Applied Intelligence. 2015 ; Vol. 43, No. 2. pp. 343-355.

Bibtex

@article{7c286c280b944a088c0eb3db459e7e25,
title = "Fuzzy-time-series network used to forecast linear and nonlinear time series",
abstract = "Non-probabilistic forecasting methods are commonly used in various scientific fields. Fuzzy-time-series methods are well-known non-probabilistic and nonlinear forecasting methods. Although these methods can produce accurate forecasts, linear autoregressive models can produce forecasts that are more accurate than those produced by fuzzy-time-series methods for some real-world time series. It is well known that hybrid forecasting methods are useful techniques for forecasting time series and that they have the capabilities of their components. In this study, a new hybrid forecasting method is proposed. The components of the new hybrid method are a high-order fuzzy-time-series forecasting model and autoregressive model. The new hybrid forecasting method has a network structure and is called a fuzzy-time-series network (FTS-N). The fuzzy c-means method is used for the fuzzification of time series in FTS-N, which is trained by particle swarm optimization. Istanbul Stock Exchange daily data sets from 2009 to 2013 and the Taiwan Stock Exchange Capitalization Weighted Stock Index data sets from 1999 to 2004 were used to evaluate the performance of FTS-N. The applications reveal that FTS-N produces more accurate forecasts for the 11 real-world time-series data sets.",
keywords = "Autoregressive model, Forecasting, Fuzzy time series, Hybrid method, Nonlinear time series, Particle swarm optimization",
author = "Eren Bas and Erol Egrioglu and Aladag, {Cagdas Hakan} and Ufuk Yolcu",
year = "2015",
month = sep,
day = "27",
doi = "10.1007/s10489-015-0647-0",
language = "English",
volume = "43",
pages = "343--355",
journal = "Applied Intelligence",
issn = "0924-669X",
publisher = "Springer Netherlands",
number = "2",

}

RIS

TY - JOUR

T1 - Fuzzy-time-series network used to forecast linear and nonlinear time series

AU - Bas, Eren

AU - Egrioglu, Erol

AU - Aladag, Cagdas Hakan

AU - Yolcu, Ufuk

PY - 2015/9/27

Y1 - 2015/9/27

N2 - Non-probabilistic forecasting methods are commonly used in various scientific fields. Fuzzy-time-series methods are well-known non-probabilistic and nonlinear forecasting methods. Although these methods can produce accurate forecasts, linear autoregressive models can produce forecasts that are more accurate than those produced by fuzzy-time-series methods for some real-world time series. It is well known that hybrid forecasting methods are useful techniques for forecasting time series and that they have the capabilities of their components. In this study, a new hybrid forecasting method is proposed. The components of the new hybrid method are a high-order fuzzy-time-series forecasting model and autoregressive model. The new hybrid forecasting method has a network structure and is called a fuzzy-time-series network (FTS-N). The fuzzy c-means method is used for the fuzzification of time series in FTS-N, which is trained by particle swarm optimization. Istanbul Stock Exchange daily data sets from 2009 to 2013 and the Taiwan Stock Exchange Capitalization Weighted Stock Index data sets from 1999 to 2004 were used to evaluate the performance of FTS-N. The applications reveal that FTS-N produces more accurate forecasts for the 11 real-world time-series data sets.

AB - Non-probabilistic forecasting methods are commonly used in various scientific fields. Fuzzy-time-series methods are well-known non-probabilistic and nonlinear forecasting methods. Although these methods can produce accurate forecasts, linear autoregressive models can produce forecasts that are more accurate than those produced by fuzzy-time-series methods for some real-world time series. It is well known that hybrid forecasting methods are useful techniques for forecasting time series and that they have the capabilities of their components. In this study, a new hybrid forecasting method is proposed. The components of the new hybrid method are a high-order fuzzy-time-series forecasting model and autoregressive model. The new hybrid forecasting method has a network structure and is called a fuzzy-time-series network (FTS-N). The fuzzy c-means method is used for the fuzzification of time series in FTS-N, which is trained by particle swarm optimization. Istanbul Stock Exchange daily data sets from 2009 to 2013 and the Taiwan Stock Exchange Capitalization Weighted Stock Index data sets from 1999 to 2004 were used to evaluate the performance of FTS-N. The applications reveal that FTS-N produces more accurate forecasts for the 11 real-world time-series data sets.

KW - Autoregressive model

KW - Forecasting

KW - Fuzzy time series

KW - Hybrid method

KW - Nonlinear time series

KW - Particle swarm optimization

U2 - 10.1007/s10489-015-0647-0

DO - 10.1007/s10489-015-0647-0

M3 - Journal article

AN - SCOPUS:84937976127

VL - 43

SP - 343

EP - 355

JO - Applied Intelligence

JF - Applied Intelligence

SN - 0924-669X

IS - 2

ER -