A Comparative Study of Semiparametric Estimation in Partially Linear Single-index Models

COMMUNICATIONS IN STATISTICS-SIMULATION AND COMPUTATION(2016)

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摘要
We consider a semiparametric method based on partial splines for estimating the unknown function and partially linear regression parameters in partially linear single-index models. Three methodsproject pursuit regression (PPR), average derivative estimation (ADE), and a boosting methodare considered for estimating the single-index parameters. Simulations revealed that PPR with partial splines was superior in estimating single-index parameters, while the boosting method with partial splines performed no better than PPR and ADE. All three methods performed similarly in estimating the partially linear regression parameters. The relative performances of the methods are also illustrated using a real-world data example.
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关键词
Boosting,Partial spline,Partially linear model,Penalized likelihood,Project pursuit regression,Single-index
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