Proposed Hybrid Method for Wavelet Shrinkage with Robust Multiple Linear Regression Model

With Simulation Study

Authors

  • Taha Hussien Ali Department of Statistics and Informatics, College of Administration and Economics, University of Salahaddin, Erbil, Iraq.
  • Dlshad Mahmood Saleh Department of Statistics and Informatics, College of Administration and Economics, University of Salahaddin, Erbil, Iraq.

DOI:

https://doi.org/10.25212/lfu.qzj.7.1.36

Keywords:

Linear Regression Model; Robust Method; Wavelet; Shrinkage

Abstract

This study compares the proposed hybrid method (wavelet robust M-estimation) to the traditional method (wavelet ordinary least square) when there are de-noising or outlier problems for estimating multiple linear regression models using the statistical criterion root mean square error (RMSE). According to simulated and real data, the proposed hybrid method (wavelet robust M-estimation) is better than the classical method (Wavelet Ordinary Least Square) and more accurate. The root mean square error of the proposed hybrid method (wavelet robust M-estimation) is less than the Wavelet Ordinary Least Square. Therefore, it is recommended to use the hybrid proposed method to reduce the problem of outliers and de-noise data.

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References

Abramovich F., Bailey T. C and Sapatinas T. (2000) "Wavelet analysis and its statistical applications", The Statistician, Vol.49 (1), pp.I-29.

Afshari, M., Bazyari, A., Moradian, Y., and Karamikabir, H.,(2020)" The Bayesian Wavelet Thresholding Estimators of Nonparametric Regression Model Based on Mixture Prior Distribution" Journal of Statistical Sciences, Spring and Summer, 2020 Vol. 14, No. 2, pp. 287-306.

Antoniadis A. (2007) "Wavelet methods in statistic: Some recent development and their applications", Statistics surveys, France, Vol.1, pp. (24-28).

Barnett, V. and Lewis, T. (1994). Outliers in Statistical Data. John Wiley.

Daubechies I., (1988), Orthonormal bases of Company Support Wavelets, Comm. Applied Mathematics, 41: 909-996.

Donoho, D. L. and Johnstone, I. M., (1994a) Ideal denoising in an orthonormal basis chosen from a library of bases. Compt. Rend. Acad. Sci. Paris A, 319, 1317–1322.

Fox J, Weisberg S. An R Companion to Applied Regression, 3 rd. Edition. Sage Publications, 2018.

Gencay, R.,Selcuk.,F.,and Whithcher ,b. (2002),"An Introduction to Wavelet and other Filtering Methods in Finance and Economics ",Turkey.

Goupillaud, P., Grossmann, A., Morlet, J. (1984) Cycle-octave and related transforms in seismic signal analysis. Geoexploration, 23. 85-102.

Hamad.A.S. (2010) "Using some thresholding rules in wavelet shrinkage to denoise signals for simple regression with application”, college of Administration and Economic, university of Sulaimania, Iraq.

Hawkins, D. M. (1980). Identification of outliers: Springer.

Hisham M. Almongy& Ehab M. Almetwally, (2017)" Comparison Between Methods of Robust Estimation for Reducing the Effect of Outliers" The Egyptian Journal for Commercial Studies, Faculty of Commerce, Mansoura University, Egypt.

kanamori, T. & fujisawa, H., (2015) "Robust estimation under heavy contamination using un-normalized models" Biometrika, Volume 102, Issue 3, September 2015, Pages 559–572,.

K. MacTavish and T. D. Barfoot, "At all Costs: A Comparison of Robust Cost Functions for Camera Correspondence Outliers," 2015 12th Conference on Computer and Robot Vision, 2015, pp. 62-69.

McCann, L. (2006). Robust Model Selection and Outlier Detection in Linear Regression.pdf .Unpublished,phD Thesis, Massachusetts Institute Of Technology.

Montgomery, D. C., Peck, E. A., & Vining, G. G. (2012). Introduction to linear regression analysis (Vol. 821): John Wiley & Sons.

Morris J. M .and Peravali R. (1999) "Minimum-bandwidth discrete-time wavelets", Signal Processing, Vo1.76 (2), pp.181-193.

P. J. Huber, Robust estimation of a location parameter, Ann. Math. Statist. 35 (1964), pp. 73–101.

Raj, S. S., & Kannan, K. S. (2017). Detection of Outliers in Regression Model for Medical Data. International Journal of Medical Research & Health Sciences, 6(7), 50-56.

Rousseeuw, P. J., & Leroy, A. M. (1987). Robust regression and outlier detection (Vol. 1): Wiley Online Library.

Ruckstuhl, A. (2014). Robust Fitting of Parametric Models Based on M-Estimation. Lecture notes.

Sardy,S. , Tseng P., and Bruce,A., (2001) “Robust Wavelet Denoising” IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 49, NO. 6, JUNE 2001.

Vidakovic, B., (1999) Statistical Modeling by Wavelets. Wiley, New York.

Walker, J. S., 1999. "A Primer on Wavelets and Their Scientific Applications", 1st Edition .Studies in Advanced Mathematics. CRC Press LLC, 2000 N. W. Corporate Blvd., Boca Raton, Florida, U.S.A.

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Published

2022-03-30

How to Cite

Taha Hussien Ali, & Dlshad Mahmood Saleh. (2022). Proposed Hybrid Method for Wavelet Shrinkage with Robust Multiple Linear Regression Model : With Simulation Study. QALAAI ZANIST JOURNAL, 7(1), 920–937. https://doi.org/10.25212/lfu.qzj.7.1.36

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Articles