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Influence measures in nonparametric regression model with symmetric random errors. (English) Zbl 07702204

Summary: In this paper we present several diagnostic measures for the class of nonparametric regression models with symmetric random errors, which includes all continuous and symmetric distributions. In particular, we derive some diagnostic measures of global influence such as residuals, leverage values, Cook’s distance and the influence measure proposed by Peña (Technometrics 47(1):1-12, 2005) to measure the influence of an observation when it is influenced by the rest of the observations. A simulation study to evaluate the effectiveness of the diagnostic measures is presented. In addition, we develop the local influence measure to assess the sensitivity of the maximum penalized likelihood estimator of smooth function. Finally, an example with real data is given for illustration.

MSC:

62-XX Statistics
60-XX Probability theory and stochastic processes
Full Text: DOI

References:

[1] Akaike H (1973) Information theory and an extension of the maximum likelihood principle. In: Second international symposium on information theory, pp 267-281 · Zbl 0283.62006
[2] Boor, C., A practical guide to splines (1978), Berlin: Springer Verlag, Berlin · Zbl 0406.41003 · doi:10.1007/978-1-4612-6333-3
[3] Buja, A.; Hastie, T.; Tibshirani, R., Linear smoothers and additive models, Ann Stat, 17, 453-510 (1989) · Zbl 0689.62029
[4] Cook, RD, Detection of influential observation in linear regression, Technometrics, 19, 1, 15-18 (1977) · Zbl 0371.62096
[5] Cook, RD, Assessment of local influence, J Roy Stat Soc: Ser B (Methodol), 48, 2, 133-155 (1986) · Zbl 0608.62041
[6] Cook, RD; Weisberg, S., Residuals and influence in regression (1982), New York: Chapman and Hall, New York · Zbl 0564.62054
[7] Craven, P.; Wahba, G., Smoothing noisy data with spline functions, Numer Math, 31, 4, 377-403 (1978) · Zbl 0377.65007 · doi:10.1007/BF01404567
[8] Dunn, P.; Smyth, G., Randomized quatile residuals, J Comput Graph Stat, 52, 5, 236-244 (1996)
[9] Eilers, P.; Marx, B., Flexible smoothing with b-splines and penalties, Stat Sci, 11, 89-121 (1996) · Zbl 0955.62562 · doi:10.1214/ss/1038425655
[10] Emami, H., Local influence for Liu estimators in semiparametric linear models, Stat Pap, 59, 2, 529-544 (2018) · Zbl 1395.62209 · doi:10.1007/s00362-016-0775-6
[11] Eubank, R., The hat matrix for smoothing splines, Stat Probab Lett, 2, 1, 9-14 (1984) · Zbl 0521.65010 · doi:10.1016/0167-7152(84)90029-4
[12] Eubank, R., Diagnostics for smoothing splines, J R Stat Soc Ser B (Methodological), 47, 332-341 (1985) · Zbl 0605.62031
[13] Eubank, R.; Gunst, R., Diagnostics for penalized least-squares estimators, Stat Probab Lett, 4, 5, 265-272 (1986) · Zbl 0605.62082 · doi:10.1016/0167-7152(86)90101-X
[14] Eubank, RL; Thomas, W., Detecting heteroscedasticity in nonparametric regression, J Roy Stat Soc: Ser B (Methodol), 55, 1, 145-155 (1993) · Zbl 0780.62033
[15] Fang, K.; Kotz, S.; Ng, KW, Symmetric multivariate and related distributions (1990), London: Chapman and Hall, London · Zbl 0699.62048 · doi:10.1007/978-1-4899-2937-2
[16] Ferreira, CS; Paula, GA, Estimation and diagnostic for skew-normal partially linear models, J Appl Stat, 44, 16, 3033-3053 (2017) · Zbl 1516.62280 · doi:10.1080/02664763.2016.1267124
[17] Fung, WK; Zhu, ZY; Wei, BC; He, X., Influence diagnostics and outlier tests for semiparametric mixed models, J R Stat Soc Ser B (Statistical Methodology), 64, 3, 565-579 (2002) · Zbl 1090.62039 · doi:10.1111/1467-9868.00351
[18] Green, PJ; Silverman, BW, Nonparametric regression and generalized linear models: a roughness penalty approach (1993), Boca Raton: CRC Press, Boca Raton · doi:10.1201/b15710
[19] Hastie, T.; Tibshirani, R., Generalized additive models (1990), Boca Raton: CRC Press, Boca Raton · Zbl 0747.62061
[20] Huber, PJ, Robust statistics (2004), New Jersey: John Wiley & Sons, New Jersey
[21] Ibacache-Pulgar, G.; Paula, GA, Local influence for student-t partially linear models, Comput Stat Data Anal, 55, 3, 1462-1478 (2011) · Zbl 1328.62025 · doi:10.1016/j.csda.2010.10.009
[22] Ibacache-Pulgar, G.; Paula, GA; Galea, M., Influence diagnostics for elliptical semiparametric mixed models, Stat Model, 12, 2, 165-193 (2012) · Zbl 1420.62175 · doi:10.1177/1471082X1001200203
[23] Ibacache-Pulgar, G.; Paula, GA; Cysneiros, FJA, Semiparametric additive models under symmetric distributions, TEST, 22, 1, 103-121 (2013) · Zbl 1302.62094 · doi:10.1007/s11749-012-0309-z
[24] Kim, C., Cook’s distance in spline smoothing, Stat Probab Lett, 31, 2, 139-144 (1996) · Zbl 0903.62032 · doi:10.1016/S0167-7152(96)00025-9
[25] Kim, C.; Park, BU; Kim, W., Influence diagnostics in semiparametric regression models, Stat Probab Lett, 60, 1, 49-58 (2002) · Zbl 1092.62525 · doi:10.1016/S0167-7152(02)00268-7
[26] Peña, D., A new statistic for influence in linear regression, Technometrics, 47, 1, 1-12 (2005) · doi:10.1198/004017004000000662
[27] Schwarz, G., Estimating the dimension of a model, Ann Stat, 6, 2, 461-464 (1978) · Zbl 0379.62005 · doi:10.1214/aos/1176344136
[28] Silverman, BW, Some aspects of the spline smoothing approach to non-parametric regression curve fitting, J Roy Stat Soc: Ser B (Methodol), 47, 1, 1-21 (1985) · Zbl 0606.62038
[29] Speckman, P., Kernel smoothing in partial linear models, J Roy Stat Soc: Ser B (Methodol), 50, 3, 413-436 (1988) · Zbl 0671.62045
[30] Thomas, W., Influence diagnostics for the cross-validated smoothing parameter in spline smoothing, J Am Stat Assoc, 86, 415, 693-698 (1991) · doi:10.1080/01621459.1991.10475096
[31] Türkan, S.; Toktamis, Ö., Detection of influential observations in semiparametric regression model, Revista Colombiana de Estadística, 36, 2, 271-284 (2013) · Zbl 1308.62087
[32] Vanegas, L.; Paula, G., An extension of log-symmetric regression models: R codes and applications, J Stat Comput Simul, 86, 9, 1709-1735 (2016) · Zbl 1510.62191 · doi:10.1080/00949655.2015.1081689
[33] Wahba, G., Bayesian “confidence intervals” for the cross-validated smoothing spline, J Roy Stat Soc: Ser B (Methodol), 45, 1, 133-150 (1983) · Zbl 0538.65006
[34] Wei, WH, Derivatives diagnostics and robustness for smoothing splines, Comput Stat Data Anal, 46, 2, 335-356 (2004) · Zbl 1429.62150 · doi:10.1016/S0167-9473(03)00170-1
[35] Wood, SN, Thin plate regression splines, J R Stat Soc Ser B (Statistical Methodology), 65, 1, 95-114 (2003) · Zbl 1063.62059 · doi:10.1111/1467-9868.00374
[36] Zhang, D.; Lin, X.; Raz, J.; Sowers, M., Semiparametric stochastic mixed models for longitudinal data, J Am Stat Assoc, 93, 442, 710-719 (1998) · Zbl 0918.62039 · doi:10.1080/01621459.1998.10473723
[37] Zhu, ZY; He, X.; Fung, WK, Local influence analysis for penalized gaussian likelihood estimators in partially linear models, Scand J Stat, 30, 4, 767-780 (2003) · Zbl 1053.62054 · doi:10.1111/1467-9469.00363
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