A Comparison of the Nonparametric Regression Models using Smoothing Spline and Kernel Regression
This paper study about using of nonparametric
models for Gross National Product data in Turkey and Stanford heart
transplant data. It is discussed two nonparametric techniques called
smoothing spline and kernel regression. The main goal is to compare
the techniques used for prediction of the nonparametric regression
models. According to the results of numerical studies, it is concluded
that smoothing spline regression estimators are better than those of
the kernel regression.
[1] Hastie, T.J. and Tibshirani, R.J., Generalized Additive Models,
Chapman & Hall /CRC, 1999.
[2] Wahba, G., Spline Model For Observational Data, Siam, Philadelphia
Pa., 1990.
[3] Green, P. J. and Silverman, B. W., Nonparametric Regression and
Generalized Linear Models, Chapman & Hall, 1994.
[4] Eubank, R. L., Nonparametric Regression and Smoothing Spline, Marcel
Dekker Inc., 1999.
[5] Nadarya, E.A., On Estimating Regression, Theory Pb. Appl., Vol.10,
1964, pp. 186-190.
[6] Watson, G. S., Smooth Regression Analysis, Sankhya, Series A, Vol.26,
1964, pp.359-372.
[7] Yatchew, A., Semiparametric Regression for the Applied
Econometrician, Cambridge University Pres, 2003.
[8] Wand, M,. P. Ve M. C. Jones, Kernel Smoothing, New York: Chapman
and Hall, 1995.
[9] Hardle, W., Applied Nonparametric Regression, Cambridge University
Press, Cambridge ,1991.
[10] Schimek, M. G., Smoothing and Regression, Jhon. Willy. & Sons, 2000.
[11] John Crowley, Marie Hu, Covariance Analysis of Heart Transplant
Survival Data, Journal of the American Statistical Association, Vol. 72,
No. 357 Mar., 1977, pp. 27-36.
[1] Hastie, T.J. and Tibshirani, R.J., Generalized Additive Models,
Chapman & Hall /CRC, 1999.
[2] Wahba, G., Spline Model For Observational Data, Siam, Philadelphia
Pa., 1990.
[3] Green, P. J. and Silverman, B. W., Nonparametric Regression and
Generalized Linear Models, Chapman & Hall, 1994.
[4] Eubank, R. L., Nonparametric Regression and Smoothing Spline, Marcel
Dekker Inc., 1999.
[5] Nadarya, E.A., On Estimating Regression, Theory Pb. Appl., Vol.10,
1964, pp. 186-190.
[6] Watson, G. S., Smooth Regression Analysis, Sankhya, Series A, Vol.26,
1964, pp.359-372.
[7] Yatchew, A., Semiparametric Regression for the Applied
Econometrician, Cambridge University Pres, 2003.
[8] Wand, M,. P. Ve M. C. Jones, Kernel Smoothing, New York: Chapman
and Hall, 1995.
[9] Hardle, W., Applied Nonparametric Regression, Cambridge University
Press, Cambridge ,1991.
[10] Schimek, M. G., Smoothing and Regression, Jhon. Willy. & Sons, 2000.
[11] John Crowley, Marie Hu, Covariance Analysis of Heart Transplant
Survival Data, Journal of the American Statistical Association, Vol. 72,
No. 357 Mar., 1977, pp. 27-36.
@article{"International Journal of Engineering, Mathematical and Physical Sciences:53648", author = "Dursun Aydin", title = "A Comparison of the Nonparametric Regression Models using Smoothing Spline and Kernel Regression", abstract = "This paper study about using of nonparametric
models for Gross National Product data in Turkey and Stanford heart
transplant data. It is discussed two nonparametric techniques called
smoothing spline and kernel regression. The main goal is to compare
the techniques used for prediction of the nonparametric regression
models. According to the results of numerical studies, it is concluded
that smoothing spline regression estimators are better than those of
the kernel regression.", keywords = "Kernel regression, Nonparametric models,Prediction, Smoothing spline.", volume = "1", number = "12", pages = "575-5", }