Comparison of Some Wavelet Transformations to Estimate Nonparametric Regression Function

Authors

  • Saad Kadem Hamza *

DOI:

https://doi.org/10.33095/k7yy1e06

Keywords:

Discrete Wavelet Transformation, non-parametric regression, Lifting Transformation, Continues Wavelet Transformation, Packet Discrete Wavelet Transformation

Abstract

The purpose of this article is to improve and minimize noise from the signal by studying wavelet transforms and showing how to use the most effective ones for processing and analysis. As both the Discrete Wavelet Transformation method was used, we will outline some transformation techniques along with the methodology for applying them to remove noise from the signal. Proceeds based on the threshold value and the threshold functions Lifting Transformation, Wavelet Transformation, and Packet Discrete Wavelet Transformation. Using AMSE, A comparison was made between them , and the best was selected. When the aforementioned techniques were applied to actual data that was represented by each of the prices, it became evident that the lifting transformation method (LIFTINGW) and the discrete transformation method with a soft threshold function and the Sure threshold value (SURESDW) were the best. Consumer prices will be the dependent variable for the period of 2015–2020, and Iraqi oil (Average price of a barrel of Iraqi oil) will serve as the explanatory variable. The methods described above have proven effective in estimating the nonparametric regression function for the study model.

 

Paper type: Research paper.

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References

References:

Abdullah, A. (2012) .Characterizations of dimension functions of wavelet packets . Jordan Journal of Mathematics and Statistics (JJMS) 5(3), 2012, pp.151 – 167.

Abdullah,A.2013. Tightwave packet frames for L2(R) andH 2(R). Arab J.Math. Sci. 19(2), 151–158 (2013).

Abramovich, F., Bailey, T. C., & Sapatinas, T. (2000). Wavelet analysis and its statistical applications. Journal of the Royal Statistical Society: Series D (The Statistician), 49(1), 1-29.‏

Aldroubi, A., & Unser, M. A. (1993, November). Generalized sampling theory and applications to multiresolutions and wavelets of L2. In Mathematical Imaging: Wavelet Applications in Signal and Image Processing (Vol. 2034, pp. 24-32). SPIE.

Ali.L, Abdulameer .E ((2022). Robust Estimation OF The Partial Regression Model Using Wavelet Thresholding. Journal of Economics and Administrative Sciences, 28(133), 97-113.

Altaher, A. M., & Ismail, M. T. (2010). A comparison of some thresholding selection methods for wavelet regression. International Journal of Mathematical and Computational Sciences, 4(2), 209-215.

‏Amato, U., & Antoniadis, A. (2001). Adaptive wavelet series estimation in separable nonparametric regression models. Statistics and Computing, 11, 373-394.‏

Yagle, A. E., & Kwak, B. J. (1996). AN INTRODUCTION TO WAVELETS. Dept. of Electrical Engineering and Computer Science, The University of Michigan, Ann Arbor MI, Presentation to Ford Motor

Averkamp, R., & Houdré, C. (2003). Wavelet thresholding for non-necessarily Gaussian noise: idealism. The Annals of Statistics, 31(1), 110-151.‏

Averkamp, R., & Houdré, C. (2000). A note on the discrete wavelet transform of second-order processes. IEEE Transactions on information Theory, 46(4), 1673-1676.‏

Aviral, A. K., Cunado, J., Hatemi-J, A., & Gupta, R. (2019). Oil price-inflation pass-through in the United States over 1871 to 2018: a wavelet coherency analysis. Structural Change and Economic Dynamics, 50, 51-55.‏

Burrus, C., Gopinath, R. and Guo, H. (1998). Introduction to wavelets and wavelet transforms: a primer. Prentice hall Upper Saddle River, New Jersey.

Burrus, C., Gopinath, R. and Guo, H. (2003). An introduction to wavelet transforms: a tutorial approach. Insight-Non-Destructive Testing and Condition Monitoring, 45(5), 344-353

Claypoole, R. L., Davis, G. M., Sweldens, W., & Baraniuk, R. G. (2003). Nonlinear wavelet transforms for image coding via lifting. IEEE Transactions on Image Processing, 12(12), 1449-1459.‏ .

Claypoole, R. L., Baraniuk, R. G., & Nowak, R. D. (1998, May). Adaptive wavelet transforms via lifting. In Proceedings of the 1998 IEEE International Conference on Acoustics, Speech and Signal Processing, ICASSP'98 (Cat. No. 98CH36181) (Vol. 3, pp. 1513-1516). IEEE.‏”.

Claypoole, R.L., Davis, G.M., Sweldens,W. and Baraniuk, R.G. (2003) Nonlinear wavelet transforms for image coding via lifting. IEEE Trans. Im. Proc., 12, 1449–1459.

Donoho, D. L. (1995). De-noising by soft-thresholding. IEEE transactions on information theory, 41(3), 613-627.‏

Damian, W. (2021). Problems of Selecting the Wavelet Transform Parameters in the Aspect of Surface Texture Analysis. Tehnički vjesnik, 28(1), 305-312.‏

Daubechies, I. (1992). Ten lectures on wavelets. Society for industrial and applied mathematics.‏

Donoho D. L. 1993 "De – Noising by Soft Thresholding" IEEE Trans. Info Theory Vol (43).PP 933-936.

Donoho, D. L., & Johnstone, I. M. (1995). Adapting to unknown smoothness via wavelet shrinkage. Journal of the american statistical association, 1200-1224.‏

Donoho, D. L., & Johnstone, I. M. (1994). Ideal spatial adaptation by wavelet shrinkage. biometrika, 81(3), 425-455.‏

Donoho, D. L., & Johnstone, I. M. (1995). Adapting to unknown smoothness via wavelet shrinkage. Journal of the american statistical association, 1200-1224.‏

Ginnity, K., Varbanov, R., & Chicken, E. (2017). Cross-validated wavelet block thresholding for non-Gaussian errors. Computational Statistics & Data Analysis, 106, 127-137.‏

Hamza, S. K., & Ali, S. (2022). Estimation of nonparametric regression function using shrinkage wavelet and different mother functions. Periodicals of Engineering and Natural Sciences, 10(6), 96-103.‏

Hamza, S. K. Zeidan, O (2022). The Comparison Of Different Threshold Rules In Estimating The Wavelet Regression Function. World Economics and Finance Bulletin, 14, 109-120.

Hassan, Y. A., & Hmood, M. Y. (2020). Estimation of return stock rate by using wavelet and kernel smoothers. Periodicals of Engineering and Natural Sciences, 8(2), 602-612.‏

He, C., Xing, J., Li, J., Yang, Q., & Wang, R. (2015). A new wavelet threshold determination method considering interscale correlation in signal denoising. Mathematical Problems in Engineering, 2015.‏

HE, H., & Tan, Y. (2018). A novel adaptive wavelet thresholding with identical correlation shrinkage function for ECG noise removal. Chinese Journal of Electronics, 27(3), 507-513.‏

Hmood, M. Y., & Hamza, A. H. (2021, May). Discrete wavelet based estimator for the Hurst parameter of multivariate fractional Brownian motion. In Journal of Physics: Conference Series (Vol. 1879, No. 3, p. 032033). IOP Publishing.‏.

Daubechies, I. (1990). The wavelet transform, time-frequency localization and signal analysis. IEEE transactions on information theory, 36(5), 961-1005.‏

Ibrahim, M. K., & Al-Qazaz, Q. N. N. (2020). Comparison between the estimated of nonparametric methods by using the methodology of quantile regression models. Periodicals of Engineering and Natural Sciences, 8(2), 572-579.‏

K. Ahmad, K., Kumar, R., & Debnath, L. (2001). On Fourier transforms of wavelet packets. Zeitschrift Fur Analysis Und Ihre Anwendungen, 20(3), 579-588.‏

Khalil A. A. 2018 "Wavelet Packets and Their Statistical Applications" ISSN 2364-6748 Springer .

Kulik, R. , Raimondo, M. (2009). Wavelet Regression with in Random Design with Heteroscedastic Dependent Error. The Annals of Statistics, 37( 6), 3396-3430 .

Mahdi, M. S. , Hamza, S. K. 2022 "Using The Wavelet Analysis to Estimate The Nonparametric Regression Model in The Presence of Associated Errors" Int. J. Nonlinear Anal. Appl. No. 1, 1855-1862 .

Mahdi,M..S , Hamza, S.K (2022) . Using different thresholds value in wavelet reduction method to estimate the non-parametric regression model with correlation in errors . international journal of transformation in business mangment , vol : 11 ,issus :3, 2021.

Mahdi,M..S , Hamza, S.K . (2022). Using the wavelet analysis to estimate the nonparametric regression model in the presence of associated errors. International journal of nonlinear analysis and applications, 13(1), 1855-1862.

Marina I. , Nason P. , Mathew A. , 2016 " Knight, M. I., Nason, G. P., & Nunes, M. A. (2017). A wavelet lifting approach to long-memory estimation. Statistics and Computing, 27(6), 1453-1471.‏ " State Compute Springer .

Mathew, M. A., Knight, M. I., & Nason, G. P. (2006). Adaptive lifting for nonparametric regression. Statistics and Computing, 16, 143-159.‏

Muslem ,B.S,Saber A.M (2017)" Compare some wavelet estimators for parameters in the linear regression model with errors follows ARFIMA model." Journal of Economics and Administrative Sciences2017 ,(24) 104, 374-387.

Nason, G. P. (1996). Wavelet shrinkage using cross‐validation. Journal of the Royal Statistical Society: Series B (Methodological), 58(2), 463-479.‏

Nason, G. P. (2002). Choice of wavelet smoothness, primary resolution and threshold in wavelet shrinkage. Statistics and Computing, 12, 219-227.‏

Piella, G., & Heijmans, H. J. (2002). Adaptive lifting schemes with perfect reconstruction. IEEE Transactions on signal processing, 50(7), 1620-1630.‏

Robert X. G, Ruqiang Y. , 2010 "Wavelet Packet Transformation" Springer Chapter of Book PP 69-81 .

S.W. Kercel, S. W., Klein, M. B., & Pouet, B. (2001, June). Wavelet and wavelet-packet analysis of Lamb wave signatures in real-time instrumentation. In SMCia/01. Proceedings of the 2001 IEEE Mountain Workshop on Soft Computing in Industrial Applications (Cat. No. 01EX504) (pp. 1-5). IEEE.‏

Salman, A. D. (2009). Wavelet and Wavelet Packet Analysis For Image Denoising. Engineering and technology journal, 27(9).‏

Stephen W. K, Marvin B. K , Bruno P. , 2001 "Wavelet and Wavelet – Paket Analysis of Lamp Wave Signatures in Real – Time instrumentation" IEEE Mountain Workshop on Soft Computing in Industrial of Application .

Sweldens, W. (1996). Wavelets and the lifting scheme: A 5 minute tour. ZAMM-Zeitschrift fur Angewandte Mathematik und Mechanik, 76(2), 41-44.‏

Trappe, W. K., & Liu, K. J. R. (2000, December). Denoising via adaptive lifting schemes. In Wavelet Applications in Signal and Image Processing VIII (Vol. 4119, pp. 302-312). SPIE.‏

Younis, Y. A., & Hmood, M. Y. (2020). Estimate the Partial Linear Model Using Wavelet and Kernel Smoothers. Journal of Economics and Administrative Sciences, 26(119).‏

Zeidan, O. O., & Hamza, S. K. (2022). The Comparison Of Different Threshold Rules In Estimating The Wavelet Regression Function. World Economics And Finance Bulletin, 14, 109-120.‏

Published

2024-09-06

Issue

Section

Statistical Researches

How to Cite

“Comparison of Some Wavelet Transformations to Estimate Nonparametric Regression Function” (2024) Journal of Economics and Administrative Sciences, 30(142), pp. 532–549. doi:10.33095/k7yy1e06.

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