Nonlinear Varying-Coefficient Models with Applications to a Photosynthesis Study

被引:0
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作者
Esra Kürüm
Runze Li
Yang Wang
Damla Şentürk
机构
[1] Istanbul Medeniyet University,Department of Statistics
[2] The Pennsylvania State University,Department of Statistics and The Methodology Center
[3] Quantitative Marketing Research,Division of Strategic Investment, Marketing and Treasury
[4] University of California,Department of Biostatistics
关键词
Generalized ; -test; Local linear regression; Nonlinear regression model; Varying coefficient models;
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学科分类号
摘要
Motivated by a study on factors affecting the level of photosynthetic activity in a natural ecosystem, we propose nonlinear varying-coefficient models, in which the relationship between the predictors and the response variable is allowed to be nonlinear. One-step local linear estimators are developed for the nonlinear varying-coefficient models and their asymptotic normality is established leading to point-wise asymptotic confidence bands for the coefficient functions. Two-step local linear estimators are also proposed for cases where the varying-coefficient functions admit different degrees of smoothness; bootstrap confidence intervals are utilized for inference based on the two-step estimators. We further propose a generalized F-test to study whether the coefficient functions vary over a covariate. We illustrate the proposed methodology via an application to an ecology data set and study the finite sample performance by Monte Carlo simulation studies.
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页码:57 / 81
页数:24
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