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bigsplines (version 1.1-1)

Smoothing Splines for Large Samples

Description

Fits smoothing spline regression models using scalable algorithms designed for large samples. Seven marginal spline types are supported: linear, cubic, different cubic, cubic periodic, cubic thin-plate, ordinal, and nominal. Random effects and parametric effects are also supported. Response can be Gaussian or non-Gaussian: Binomial, Poisson, Gamma, Inverse Gaussian, or Negative Binomial.

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Version

Install

install.packages('bigsplines')

Monthly Downloads

702

Version

1.1-1

License

GPL (>= 2)

Maintainer

Nathaniel Helwig

Last Published

May 25th, 2018

Functions in bigsplines (1.1-1)

plotci

Generic X-Y Plotting with Confidence Intervals
makessg

Makes Objects to Fit Generalized Smoothing Spline ANOVA Models
plotbar

Generic X-Y Plotting with Colorbar
makessa

Makes Objects to Fit Smoothing Spline ANOVA Models
imagebar

Displays a Color Image with Colorbar
makessp

Makes Objects to Fit Smoothing Splines with Parametric Effects
bigtps

Fits Cubic Thin-Plate Splines
predict.bigtps

Predicts for "bigtps" Objects
ssBasis

Smoothing Spline Basis for Polynomial Splines
summary

Summarizes Fit Information for bigsplines Model
predict.bigssp

Predicts for "bigssp" Objects
binsamp

Bin-Samples Strategic Knot Indices
bigsplines-internal

Internal functions for big splines package
bigspline

Fits Smoothing Spline
bigssp

Fits Smoothing Splines with Parametric Effects
ordspline

Fits Ordinal Smoothing Spline
bigssg

Fits Generalized Smoothing Spline ANOVA Models
bigssa

Fits Smoothing Spline ANOVA Models
bigsplines-package

bigsplines
predict.bigssg

Predicts for "bigssg" Objects
predict.bigssa

Predicts for "bigssa" Objects
predict.bigspline

Predicts for "bigspline" Objects
predict.ordspline

Predicts for "ordspline" Objects
print

Prints Fit Information for bigsplines Model