Asymptotics for kernel estimate of sliced inverse regression 论文
1996The Annals of Statistics引用 237
Statistical Methods and InferenceBayesian Methods and Mixture ModelsNumerical methods in inverse problems
摘要
To explore nonlinear structures hidden in high-dimensional data and to estimate the effective dimension reduction directions in multivariate nonparametric regression, Li and Duan proposed the sliced inverse regression (SIR) method which is simple to use. In this paper, the asymptotic properties of the kernel estimate of sliced inverse regression are investigated. It turns out that regardless of the kernel function, the asymptotic distribution remains the same for a wide range of smoothing parameters.