Try the creating scatterplot exercises in this course on data visualization in R.This table displays the results of Data table for Chart 5.6.1. You can perform a similar function with the scatter3d( x, y, z ) in the Rcmdr package. col= and size= control the color and size of the points respectively. The first three arguments are the x, y, and z numeric vectors representing points. It creates a spinning 3D scatterplot that can be rotated with the mouse. You can also create an interactive 3D scatterplot using the plot3D( x, y, z ) function in the rgl package. S3d <-scatterplot3d(wt,disp,mpg, pch=16, highlight.3d=TRUE, Scatterplot3d(wt,disp,mpg, pch=16, highlight.3d=TRUE,Ĭlick to view # 3D Scatterplot with Coloring and Vertical Lines Scatterplot3d(wt,disp,mpg, main="3D Scatterplot")Ĭlick to view # 3D Scatterplot with Coloring and Vertical Drop Lines Use the function scatterplot3d( x, y, z). You can create a 3D scatterplot with the scatterplot3d package. Then add the alpha transparency level as the 4th number in the color vector. For example, col2rgb(" darkgreen") yeilds r=0, g=100, b=0. Note: You can use the col2rgb( ) function to get the rbg values for R colors. # High Density Scatterplot with Color Transparency See help(sunflowerplot) for details.įinally, you can save the scatterplot in PDF format and use color transparency to allow points that overlap to show through (this idea comes from B.S. # High Density Scatterplot with BinningĪnother option for a scatterplot with significant point overlap is the sunflowerplot. The hexbin(x, y) function in the hexbin package provides bivariate binning into hexagonal cells (it looks better than it sounds). There are several approaches that be used when this occurs. When there are many data points and significant overlap, scatterplots become less useful. Main="Variables Ordered and Colored by Correlation" # reorder variables so those with highest correlationĬpairs(dta, dta.o, lors=dta.col, gap=.5, # Scatterplot Matrices from the glus Packageĭta.r <- abs(cor(dta)) # get correlationsĭta.col <- lor(dta.r) # get colors It can also color code the cells to reflect the size of the correlations. The gclus package provides options to rearrange the variables so that those with higher correlations are closer to the principal diagonal. Scatterplot.matrix(~mpg+disp+drat+wt|cyl, data=mtcars, # Scatterplot Matrices from the car Package The car package can condition the scatterplot matrix on a factor, and optionally include lowess and linear best fit lines, and boxplot, densities, or histograms in the principal diagonal, as well as rug plots in the margins of the cells. # Scatterplot Matrices from the lattice Package The latticepackage provides options to condition the scatterplot matrix on a factor. Analysts must love scatterplot matrices! # Basic Scatterplot Matrix There are at least 4 useful functions for creating scatterplot matrices. Xlab="Weight of Car", ylab="Miles Per Gallon", The scatterplot( ) function in the car package offers many enhanced features, including fit lines, marginal box plots, conditioning on a factor, and interactive point identification. Lines(lowess(wt,mpg), col="blue") # lowess line (x,y) (To practice making a simple scatterplot, try this interactive example from DataCamp.) # Add fit linesĪbline(lm(mpg~wt), col="red") # regression line (y~x) Xlab="Car Weight ", ylab="Miles Per Gallon ", pch=19) Plot(wt, mpg, main="Scatterplot Example", The basic function is plot( x, y ), where x and y are numeric vectors denoting the (x,y) points to plot. There are many ways to create a scatterplot in R.
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