Boxplots for conditional distribution
Draws boxplots for y by binning on x. This gives a coarse, but quick, representation of the conditional distrubtion of [Y|X] in terms of boxplots.
bplot.xy(x, y, N = 10, breaks = pretty(x, N, eps.correct = 1), plot=TRUE, ...)
x |
Vector to use for bin membership |
y |
Vector to use for constructing boxplot statistics. |
N |
Number of bins on x. Default is 10. |
breaks |
Break points defining bin boundaries. These can be unequally spaced. |
plot |
If FALSE just returns a list with the statistics used for plotting the box plots, bin centers, etc. – More stuff than you can imagine! |
... |
Any other optional arguments passed to the standard |
bplot, draw.bplot
# condition on swim times to see how run times vary bplot.xy( minitri$swim, minitri$run, N=5) # bivariate normal corr= .8 set.seed( 123) x<-rnorm( 2000) y<- .8*x + sqrt( 1- .8**2)*rnorm( 200) # bplot.xy(x,y) # bplot.xy( x,y, breaks=seq( -3, 3,,25) , xlim =c(-4,4), ylim =c(-4,4), col="grey80", lwd=2) points( x,y,col=3, cex=.5)
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