变系数混合模型的统计推断及其应用

Statistical Inference and Applications of Mixture of Varying Coefficient Models

Scandinavian Journal of Statistics · 2018
被引 14
ABS 3

中文导读

提出一种新的变系数混合模型,允许各成分的系数、混合比例和离散参数均为未知光滑函数,并系统研究了可识别性、估计和推断方法,适用于CO2与GDP数据等经济分析。

Abstract

Abstract In this paper, we consider a new mixture of varying coefficient models, in which each mixture component follows a varying coefficient model and the mixing proportions and dispersion parameters are also allowed to be unknown smooth functions. We systematically study the identifiability, estimation and inference for the new mixture model. The proposed new mixture model is rather general, encompassing many mixture models as its special cases such as mixtures of linear regression models, mixtures of generalized linear models, mixtures of partially linear models and mixtures of generalized additive models, some of which are new mixture models by themselves and have not been investigated before. The new mixture of varying coefficient model is shown to be identifiable under mild conditions. We develop a local likelihood procedure and a modified expectation–maximization algorithm for the estimation of the unknown non‐parametric functions. Asymptotic normality is established for the proposed estimator. A generalized likelihood ratio test is further developed for testing whether some of the unknown functions are constants. We derive the asymptotic distribution of the proposed generalized likelihood ratio test statistics and prove that the Wilks phenomenon holds. The proposed methodology is illustrated by Monte Carlo simulations and an analysis of a CO 2 ‐GDP data set.

计量经济学非参数统计混合模型变系数模型