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Library for data smoothing using interpolating splines
Load the library if installed.
library("ICSsmoothing")
The library consists one testing dataframe with two numeric columns
x
and y
.
CERN
, where
CERN$x = [1, 2, ..., 277]
,and five public functions
cics_unif_explicit(...)
- create and plot the
uniform explicit spline,
cics_unif_explicit(
uumin = CERN$x[1], # start spline at this x-coordinate
uumax = CERN$x[10], # finish spline at this x-coordinate
yy = CERN$y[1:10], # y-coordinates for spline control points
d = c(0,0), # derivateves at points (uumin, yy[1]) and (uumax, yy[length(yy)])
xlab="X axis", # x-axis label
ylab="Y axis" # y-axis label
)
cics_unif_explicit_smooth(...)
- create and plot the
uniform explicit spline as smoothing curve,
cics_unif_explicit_smooth(
xx = CERN$x, # x-coordinates to smooth
yy = CERN$y, # y-coordinates to smooth
k = 21, # number of components of a smoothing spline
d = c(0, 1), # derivateves at points (uumin, yy[1]) and (uumax, yy[length(yy)])
xlab = "X axis", # x-axis label
ylab = "Y axis"
)
cics_explicit(...)
- create and plot the explicit
spline,
cics_explicit(
uu = c(1, 2.2, 3, 3.8, 7), # x-coordinates for spline control points
yy = CERN$y[1:5], # y-coordinates for spline control points
d = c(0,0), # derivateves at points (uu[1], yy[1]) and (uu[length(uu)], yy[length(yy)])
xlab="X axis", # x-axis label
ylab="Y axis" # y-axis label
)
cics_explicit_smooth(...)
- create and plot the
explicit spline as smoothing curve,
cics_explicit_smooth(
xx = CERN$x, # x-coordinates to smooth
yy = CERN$y, # y-coordinates to smooth
uu = c(1, 4, 7, 20, 41, 57, 86, 92, 101, 121, 220, 245, 261, 277), # # x-coordinates for spline control points. uu[1] == xx[1] and uu[length(uu)] == xx[length(xx)]
d = c(0, 1), # derivateves at points (uumin, yy[1]) and (uumax, yy[length(yy)])
xlab = "X axis", # x-axis label
ylab = "Y axis"
)
forecast_demo()
- demo showing a usage of an
explicit spline to forecast some data. See the commented source code of
the function for more details about the functionality.
On Windows Windows run in R console (or RStudio)
install.packages("Rtools", force = TRUE)
library("Rtools")
On Linux (Ubuntu) install first these packages
sudo apt install libxml2-dev libssl-dev libcurl4-openssl-dev libopenblas-dev r-base r-base-dev
In both cases then run in R console
::install_github("klutometis/roxygen", force = TRUE)
devtoolslibrary(roxygen2)
install.packages("digest")
library(digest)
install.packages("polynom")
library(polynom)
install.packages("ggplot2")
library(ggplot2)
Open system terminal in the parent directory of the package and type
R CMD build ICSsmoothing
R CMD install ICSsmoothing_1.2.8.tar.gz
OR Open RStudio and install this library using top menu button Build->Install and Restart.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.