2022
DOI: 10.1002/cjs.11732
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Pretest and shrinkage estimators in generalized partially linear models with application to real data

Abstract: Semiparametric models hold promise to address many challenges to statistical inference that arise from real‐world applications, but their novelty and theoretical complexity create challenges for estimation. Taking advantage of the broad applicability of semiparametric models, we propose some novel and improved methods to estimate the regression coefficients of generalized partially linear models (GPLM). This model extends the generalized linear model by adding a nonparametric component. Like in parametric mode… Show more

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