SLICING REGRESSION - A LINK-FREE REGRESSION METHOD

成果类型:
Article
署名作者:
DUAN, N; LI, KC
署名单位:
University of California System; University of California Los Angeles
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/aos/1176348109
发表日期:
1991
页码:
505-530
关键词:
dependent variable models ordinary least-squares projection pursuit linear-regression misspecification selection
摘要:
Consider a general regression model of the form y = g(alpha + x'beta, epsilon), with an arbitrary and unknown link function g. We study a link-free method, the slicing regression, for estimating the direction of beta. The method is easy to implement and does not require interative computation. First, we estimate the inverse regression function E(x\y) using a step function. We then estimate GAMMA = Cov[E(x\y)], using the estimated inverse regression function. Finally, we take the spectral decomposition of the estimate GAMMA-triple-over-dot with respect to the sample covariance matrix for x. The principal eigenvector is the slicing regression estimate for the direction of beta. We establish square-root n-consistency and asymptotic normality, derive the asymptotic covariance matrix and provide Wald's test and a confidence region procedure. Efficiency is discussed for an important special case. Most of our results require x to have an elliptically symmetric distribution. When the elliptical symmetry is violated, a bias bound is provided; the asymptotic bias is small when the elliptical symmetry is nearly satisfied. The bound suggests a projection index which can be used to measure the deviation from elliptical symmetry. The theory is illustrated with a simulation study.