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npbr (version 1.2)

Nonparametric Boundary Regression

Description

A variety of functions for the best known and most innovative approaches to nonparametric boundary estimation. The selected methods are concerned with empirical, smoothed, unrestricted as well as constrained fits under both separate and multiple shape constraints. They cover robust approaches to outliers as well as data envelopment techniques based on piecewise polynomials, splines, local linear fitting, extreme values and kernel smoothing. The package also seamlessly allows for Monte Carlo comparisons among these different estimation methods. Its use is illustrated via a number of empirical applications and simulated examples.

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Version

Install

install.packages('npbr')

Monthly Downloads

229

Version

1.2

License

GPL (>= 2)

Maintainer

Thibault Laurent

Last Published

July 13th, 2015

Functions in npbr (1.2)

loc_est_bw

Bandwidth selection for the local linear frontier estimator
poly_est

Polynomial frontier estimators
kern_smooth_bw

Bandwidth selection for kernel smoothing frontier estimators
kern_smooth

Frontier estimation via kernel smoothing
loc_est

Local linear frontier estimator
records

Annual sport records
quad_spline_kn

AIC and BIC criteria for choosing the optimal number of inter-knot segments in quadratic spline fits
dea_est

DEA, FDH and linearized FDH estimators.
npbr-package

Nonparametric boundary regression
green

American electric utility companies
nuclear

Reliability programs of nuclear reactors
quad_spline_est

Quadratic spline frontiers
post

French postal services