一种用于密度去卷积的谱方法

A SPECTRAL METHOD FOR DECONVOLVING A DENSITY

Econometric Theory · 2010
被引 56
人大 A-ABS 4

中文导读

提出一种基于卷积算子谱分解的密度估计新方法,允许误差特征函数存在孤立零点,适用于收入等含测量误差数据的密度估计。

Abstract

We propose a new estimator for the density of a random variable observed with an additive measurement error. This estimator is based on the spectral decomposition of the convolution operator, which is compact for an appropriate choice of reference spaces. The density is approximated by a sequence of orthonormal eigenfunctions of the convolution operator. The resulting estimator is shown to be consistent and asymptotically normal. While most estimation methods assume that the characteristic function (CF) of the error does not vanish, we relax this assumption and allow for isolated zeros. For instance, the CF of the uniform and symmetrically truncated normal distributions have isolated zeros. We show that, in the presence of zeros, the density is identified even though the convolution operator is not one-to-one. We propose two consistent estimators of the density. We apply our method to the estimation of the measurement error density of hourly income collected from survey data.

谱方法密度解卷积测量误差特征函数零点