Abstract
We propose new data-driven smooth tests for a parametric regression function. The smoothing parameter is selected through a new criterion that favors a large smoothing parameter under the null hypothesis. The resulting test is adaptive rate-optimal and consistent against Pitman local alternatives approaching the parametric model at a rate arbitrarily close to 1/√n. Asymptotic critical values come from the standard normal distribution and the bootstrap can be used in small samples. A general formalization allows one to consider a large class of linear smoothing methods, which can be tailored for detection of additive alternatives. © Institute of Mathematical Statistics, 2005.
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CITATION STYLE
Guerre, E., & Lavergne, P. (2005, April). Data-driven rate-optimal specification testing in regression models. Annals of Statistics. https://doi.org/10.1214/009053604000001200
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