Additive Interactive Regression Models: Circumvention of the Curse of Dimensionality
- 1 December 1990
- journal article
- research article
- Published by Cambridge University Press (CUP) in Econometric Theory
- Vol. 6 (4) , 466-479
- https://doi.org/10.1017/s0266466600005478
Abstract
This paper considers series estimators of additive interactive regression (AIR) models. AIR models are nonparametric regression models that generalize additive regression models by allowing interactions between different regressor variables. They place more restrictions on the regression function, however, than do fully nonparametric regression models. By doing so, they attempt to circumvent the curse of dimensionality that afflicts the estimation of fully non-parametric regression models.In this paper, we present a finite sample bound and asymptotic rate of convergence results for the mean average squared error of series estimators that show that AIR models do circumvent the curse of dimensionality. A lower bound on the rate of convergence of these estimators is shown to depend on the order of the AIR model and the smoothness of the regression function, but not on the dimension of the regressor vector. Series estimators with fixed and data-dependent truncation parameters are considered.Keywords
All Related Versions
This publication has 20 references indexed in Scilit:
- Asymptotic Normality of Series Estimators for Nonparametric and Semiparametric Regression ModelsEconometrica, 1991
- Asymptotic Optimality for $C_p, C_L$, Cross-Validation and Generalized Cross-Validation: Discrete Index SetThe Annals of Statistics, 1987
- Generalized Additive Models: Some ApplicationsJournal of the American Statistical Association, 1987
- Nonparametric Bayesian RegressionThe Annals of Statistics, 1986
- Optimal Rates of Convergence for Nonparametric EstimatorsThe Annals of Statistics, 1980
- The Predictive Sample Reuse Method with ApplicationsJournal of the American Statistical Association, 1975
- The Predictive Sample Reuse Method with ApplicationsJournal of the American Statistical Association, 1975
- The Relationship Between Variable Selection and Data Agumentation and a Method for PredictionTechnometrics, 1974
- The Relationship between Variable Selection and Data Agumentation and a Method for PredictionTechnometrics, 1974
- Some Comments on C PTechnometrics, 1973