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REFERENCES Abramson, I. (1982a). Arbitrariness of the pilot estimator in adaptive kernel methods. J. Mult. Anal. 12, 562-567. Abramson, I. (1982b). On bandwidth variation in kernel estimates-a square root law. Ann. Statist. 10, 1217-1223. Anderssen, R.S. and Bloomfield, P. (1974a). A time series approach to numerical differentiation. Technometrics 16, 69-75. Anderssen, R.S. and Bloomfield, P. (1974b). Numerical differentiation procedures for non-exact data. Numer. Math. 22, 157-182. Backman,G. (1934). Das Wachstum der Korperlange des Menschen. Kuniglicke Svenska Vetenskapsakademiens Handlingar 14, 1-145. Bartlett, M.S. (1963). Statistical estimation of density functions. Sankhya A 25, 245-254. Bendetti, J.K. (1977). One the nonparametric estimation of regression functions. J. Roy. Statist. Soc. B 39, 248-253. Beran, R. (1981). Nonparametric regression with randomly censored survival data. Technical Report, Univ. of California, Berkeley. Berkey, C.S., Reed, R.B. and Valadian, I. (1983). Midgrowth spurt in height of Boston children. Ann. Hum. BioI. 10, 25-30. Bhattacharya, P.K. and Mack, Y.P. (1985). A two-stage procedure for non- parametric estimation. Statistics and Decisions, Supplement 2, 143-153. Bhattacharya, P.K. and Mack, Y.P. (1987). Linear functions of nearest neighbor estimators of a univariate regression function. Ann. Statist. 15, 976-994. Bickel, P.J. and Wi chura , M.J. (1971). Convergence criteria for multi- parameter stochastic processes and some applications. Ann. Math. Statist. 42, 1656-1670. Billingsley, P. (1968). Convergence of Probability Measures. Wiley, New York. Bock, R.D. and Thissen, D. (1980). Statistical problems of fitting individual growth curves. In: Human Physical Growth and Maturation, Methodologies and Factors, 265-290, Ed. F.E. Johnston, A.F. Roche and C. Susanne, Plenum Press, New York. . Bock, R.D., Wainer, H., Petersen, A., Thissen, D., Murray, J. and Roche, A. (1973). A parametrization for individual human growth curves. Human Biology 45, 63-80. Breiman, L. and Friedman, J. (1985). Estimating optimal transformations for multiple regression and correlation. JASA 80, 580-597. Breiman, L., Friedman, J., Olshen, A. and Stone, C.J. (1984). CART-classifi- cation and regression trees. Wadsworth: Belmont, Calif. Breiman, L. and Meisel, W.S. (1976). General estimates of the intrinsic variability of data in nonlinear regression models. JASA 71, 301-307. Breiman, L., Meisel, W. and Purcell, E. (1977). Variable kernel estimates of multivariate densities and their calibration. Technometrics 19, 135-144. Cacoullos, R. (1966). Estimation of a multivariate density. Ann. Inst. Statist. Math. 18, 179-189. Carroll, R.J. (1982). Adapting for heteroscedasticity in linear models. Ann. Statist. 10, 1224-1233. Castro, P.E., Lawton, W.H. and Sylvestre, E.A (1986). Principal modes of variation for processes with continuous sample curves. Technomeltrics 28, 329-337.

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REFERENCES

Abramson, I. (1982a). Arbitrariness of the pilot estimator in adaptive kernel methods. J. Mult. Anal. 12, 562-567.

Abramson, I. (1982b). On bandwidth variation in kernel estimates-a square root law. Ann. Statist. 10, 1217-1223.

Anderssen, R.S. and Bloomfield, P. (1974a). A time series approach to numerical differentiation. Technometrics 16, 69-75.

Anderssen, R.S. and Bloomfield, P. (1974b). Numerical differentiation procedures for non-exact data. Numer. Math. 22, 157-182.

Backman,G. (1934). Das Wachstum der Korperlange des Menschen. Kuniglicke Svenska Vetenskapsakademiens Handlingar 14, 1-145.

Bartlett, M.S. (1963). Statistical estimation of density functions. Sankhya A 25, 245-254.

Bendetti, J.K. (1977). One the nonparametric estimation of regression functions. J. Roy. Statist. Soc. B 39, 248-253.

Beran, R. (1981). Nonparametric regression with randomly censored survival data. Technical Report, Univ. of California, Berkeley.

Berkey, C.S., Reed, R.B. and Valadian, I. (1983). Midgrowth spurt in height of Boston children. Ann. Hum. BioI. 10, 25-30.

Bhattacharya, P.K. and Mack, Y.P. (1985). A two-stage procedure for non­parametric estimation. Statistics and Decisions, Supplement 2, 143-153.

Bhattacharya, P.K. and Mack, Y.P. (1987). Linear functions of nearest neighbor estimators of a univariate regression function. Ann. Statist. 15, 976-994.

Bickel, P.J. and Wi chura , M.J. (1971). Convergence criteria for multi­parameter stochastic processes and some applications. Ann. Math. Statist. 42, 1656-1670.

Billingsley, P. (1968). Convergence of Probability Measures. Wiley, New York.

Bock, R.D. and Thissen, D. (1980). Statistical problems of fitting individual growth curves. In: Human Physical Growth and Maturation, Methodologies and Factors, 265-290, Ed. F.E. Johnston, A.F. Roche and C. Susanne, Plenum Press, New York. .

Bock, R.D., Wainer, H., Petersen, A., Thissen, D., Murray, J. and Roche, A. (1973). A parametrization for individual human growth curves. Human Biology 45, 63-80.

Breiman, L. and Friedman, J. (1985). Estimating optimal transformations for multiple regression and correlation. JASA 80, 580-597.

Breiman, L., Friedman, J., Olshen, A. and Stone, C.J. (1984). CART-classifi­cation and regression trees. Wadsworth: Belmont, Calif.

Breiman, L. and Meisel, W.S. (1976). General estimates of the intrinsic variability of data in nonlinear regression models. JASA 71, 301-307.

Breiman, L., Meisel, W. and Purcell, E. (1977). Variable kernel estimates of multivariate densities and their calibration. Technometrics 19, 135-144.

Cacoullos, R. (1966). Estimation of a multivariate density. Ann. Inst. Statist. Math. 18, 179-189.

Carroll, R.J. (1982). Adapting for heteroscedasticity in linear models. Ann. Statist. 10, 1224-1233.

Castro, P.E., Lawton, W.H. and Sylvestre, E.A (1986). Principal modes of variation for processes with continuous sample curves. Technomeltrics 28, 329-337.

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