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deamer (version 1.0)

Deconvolution density estimation with adaptive methods for a variable prone to measurement error

Description

deamer provides deconvolution algorithms for the non-parametric estimation of the density f of an error-prone variable x with additive noise e. The model is y = x + e where the noisy variable y is observed, while x is unobserved. Estimation may be performed for i) a known density of the error ii) with an auxiliary sample of pure noise and iii) with an auxiliary sample of replicate (repeated) measurements. Estimation is performed using adaptive model selection and penalized contrasts.

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Version

Install

install.packages('deamer')

Monthly Downloads

13

Version

1.0

License

GPL

Maintainer

jstirnemann

Last Published

August 5th, 2012

Functions in deamer (1.0)

mise

Mean integrated squared error
deamer-package

Non-parametric deconvolution density estimation of variables prone to measurement-error.
deamerSE

Density estimation using an auxiliary sample of pure errors
deamerRO

Density estimation using an auxiliary sample of replicate noisy observations.
laplace

Laplace distribution
deamer-class

Objects of class 'deamer'
deamerKE

Density estimation with known error density