Penalized Data Sharpening for Local Polynomial Regression


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Documentation for package ‘sharpPen’ version 1.9

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data_sharpening Penalized data sharpening for Local Linear, Quadratic and Cubic Regression
derivOperator Shape Constraint Matrix Construction
dpilc Select a Bandwidth for Local Quadratic and Cubic Regression
DR_sharpen Shape-Constrained Local Linear Regression via Douglas-Rachford
lprOperator Local Polynomial Estimator Matrix Construction
noontemp Noon Temperatures in Winnipeg, Manitoba
numericalDerivative Numerical Derivative of Smooth Function
projection_C Projection operator for rectangle or nonnegative space
projection_nb Projection operator for norm balls.
relsharpen Ridge/Enet/LASSO Sharpening via the penalty matrix.
RELsharpening Ridge/Enet/LASSO Sharpening via the mean/local polynomial regression with large bandwidth/linear regression.
relsharp_bigh Ridge/Enet/LASSO Sharpening via the local polynomial regression with large bandwidth.
relsharp_bigh_c Ridge/Enet/LASSO Sharpening via the local polynomial regression with large bandwidth and then applying the residual sharpening method.
relsharp_linear Ridge/Enet/LASSO Sharpening via the linear regression.
relsharp_linear_c Ridge/Enet/LASSO Sharpening via the linear regression and then applying the residual sharpening method.
relsharp_mean Ridge/Enet/LASSO Sharpening via the Mean
relsharp_mean_c Ridge/Enet/LASSO Sharpening via the Mean and then applying the residual sharpening method.
testfun Functions for Testing Purposes