Abstract

Data from many scientific areas often come with measurement error. Density or distribution function estimation from contaminated data and nonparametric regression with errors-in-variables are two important topics in measurement error models. In this paper, we present a new software package decon for R, which contains a collection of functions that use the deconvolution kernel methods to deal with the measurement error problems. The functions allow the errors to be either homoscedastic or heteroscedastic. To make the deconvolution estimators computationally more efficient in R, we adapt the fast Fourier transform algorithm for density estimation with error-free data to the deconvolution kernel estimation. We discuss the practical selection of the smoothing parameter in deconvolution methods and illustrate the use of the package through both simulated and real examples.

Highlights

  • Description To compute the cumulative distribution function from data coupled with measurement error

  • DeconPdf y

  • ## Deconvolution: the case of heteroscedastic errors ## Case 2: heteroscedastic normal errors n3

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Summary

Title Deconvolution Estimation in Measurement Error Models

Description This package contains a collection of functions to deal with nonparametric measurement error problems using deconvolution kernel methods. See “Deconvolution Estimation in Measurement Error Models: The R Package decon” by Wang, X.F. and Wang, B. for details

Arguments y sig error kernel grid ub
Estimating cumulative distribution function from data with measurement error
Estimating probability density function from data with measurement error
Framingham Data
See Also DeconPdf galaxy
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