同方差
异方差
数学
参数统计
独立性(概率论)
非线性回归
拟合优度
应用数学
渐近分布
回归分析
统计
估计员
出处
期刊:Econometric Reviews
日期:2019-04-03
卷期号:38 (10): 1202-1215
被引量:2
标识
DOI:10.1080/07474938.2018.1536101
摘要
This paper develops a testing procedure to simultaneously check (i) the independence between the error and the regressor(s), and (ii) the parametric specification in nonlinear regression models. This procedure generalizes the existing work of Sen and Sen [“Testing Independence and Goodness-of-fit in Linear Models,” Biometrika, 101, 927–942.] to a regression setting that allows any smooth parametric form of the regression function. We establish asymptotic theory for the test procedure under both conditional homoscedastic error and heteroscedastic error. The derived tests are easily implementable, asymptotically normal, and consistent against a large class of fixed alternatives. Besides, the local power performance is investigated. To calibrate the finite sample distribution of the test statistics, a smooth bootstrap procedure is proposed and found work well in simulation studies. Finally, two real data examples are analyzed to illustrate the practical merit of our proposed tests.
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