MDplot4multiplevectors {DataVisualizations} | R Documentation |
Mirrored Density plot (MD-plot)for Multiple Vectors
Description
This function creates a MD-plot for multiple numerical vectors of various lenghts. The MD-plot is a visualization for a boxplot-like Shape of the PDF published in [Thrun et al., 2020]. It is an improvement of violin or so-called bean plots and posses advantages in comparison to the conventional well-known box plot [Thrun et al., 2020].
Usage
MDplot4multiplevectors(..., Names, Ordering = 'Columnwise',
Scaling = "None", Fill = 'darkblue', RobustGaussian = TRUE,
GaussianColor = 'magenta', Gaussian_lwd = 1.5, BoxPlot = FALSE,
BoxColor = 'darkred', MDscaling = 'width', LineSize = 0.01,
LineColor = 'black', QuantityThreshold = 40, UniqueValuesThreshold = 12,
SampleSize = 5e+05, SizeOfJitteredPoints = 1, OnlyPlotOutput = TRUE)
Arguments
... |
Either d numerical vectors of different lengths or a list of length d where each element of the list is an vector of arbitrary length |
Names |
Optional: [1:d] Names of the variables. If missing, the columnnames of data are used. |
Ordering |
Optional: string, either |
Scaling |
Optional, Default is |
Fill |
Optional: string, color with which MDs are to be filled with. |
RobustGaussian |
Optional: If TRUE: each MDplot of a variable is overlayed with a roubustly estimated unimodal Gaussian distribution in the range of this variable, if statistical testing does not yield a significant p.value. In this case the packages moments, diptest and signal are required. |
GaussianColor |
Optional: string, color of robustly estimated gaussian, only for |
Gaussian_lwd |
Optional: numerical, line width of robustly estimated gaussian, only for |
BoxPlot |
Optional: If TRUE: each MDplot is overlayed with a Box-Whisker Diagram. |
BoxColor |
Optional: string, color of Boxplot, only for |
MDscaling |
Optional: if "area", all violins have the same area (before trimming the tails). If "count", areas are scaled proportionally to the number of observations. If "width" (default), all MDs have the same maximum width. |
LineSize |
Optional: numerical, linewidth of line around the mirrored densities. |
LineColor |
Optional: string, color of line around the mirrored densities. |
QuantityThreshold |
Optional: numeric value defining a threshold. Below this threshold no density estimation is performed and a jitter plot with a median line is drawn. Only Data Science experts should change this value after they understand how the density is estimated (see [Ultsch, 2005]). |
UniqueValuesThreshold |
Optional: numeric value defining a threshold. Below this threshold no density estimation and statistical testing is performed and a Jitter plot is drawn. Only Data Science experts should change this value after they understand how the density is estimated (see [Ultsch, 2005]). |
SampleSize |
Optional: numeric value defining a threshold. Above this threshold uniform sampling of finite cases is performed in order to shorten computation time.If rowr is not installed, uniform sampling of all cases
is performed. If required, |
SizeOfJitteredPoints |
Optional: scalar. If Not enough unique values for density estimation are given, data points are jittered. This parameter defines the size of the points. |
OnlyPlotOutput |
Optional: Default TRUE only a ggplot object is given back, if FALSE: Additinally Scaled Data and ordering are the output of this function in a |
Details
Please see MDplot
for details.
Value
In the default case of OnlyPlotOutput==TRUE
: The ggplot object of the MD-plot.
Otherwise for OnlyPlotOutput==FALSE
: A list of
ggplotObj |
The ggplot object of the MD-plot. |
Ordering |
The ordering of columns of data defined by |
DataOrdered |
[1:n,1:d] matrix of ordered and scaled data defined by |
Note that the package ggExtra is not necessarily required but if given the feauture names are automatically rotated.
Note
cbind.fill is internally used from the depricated R package rowr of Craig Varrichio.
Author(s)
Michael Thrun.
References
[Ultsch, 2005] Ultsch, A.: Pareto density estimation: A density estimation for knowledge discovery, in Baier, D.; Werrnecke, K. D., (Eds), Innovations in classification, data science, and information systems, Proc Gfkl 2003, pp 91-100, Springer, Berlin, 2005.
[Thrun et al., 2020] Thrun, M. C., Gehlert, T. & Ultsch, A.: Analyzing the Fine Structure of Distributions, PLoS ONE, Vol. 15(10), pp. 1-66, DOI 10.1371/journal.pone.0238835, 2020.
See Also
ClassMDplot
MDplot
https://pypi.org/project/md-plot/
Examples
MDplot4multiplevectors(runif(20000, 1, 5),c(rnorm(20000,0,1),
rnorm(20000,2.6,1)),c(rnorm(2000,2.5,1)),rpois(25000,5),
Names=c('A','B','C','D'))
V=list(runif(20000, 1, 5),c(rnorm(20000,0,1),
rnorm(20000,2.6,1)),c(rnorm(2000,2.5,1)),rpois(25000,5))
MDplot4multiplevectors(V,Names=c('A','B','C','D'))