I created a scatterplot (multiple groups GRP) with
DV=concentration. I wanted to add the quantile regression curves
(0.025,0.05,0.5,0.95,0.975) to my plot.
And by the way, this is what I did to create the scatter-plot:
attach(E) ## E is the name I gave to my data ## Change Group to factor so that may work with levels in the legend Group<-as.character(Group) Group<-as.factor(Group) ## Make the colored scatter-plot mycolors = c('red','orange','green','cornflowerblue') plot(Time,Concentration,main="Template",xlab="Time",ylab="Concentration",pch=18,col=mycolors[Group]) ## This also works identically ## with(E,plot(Time,Concentration,col=mycolors[Group],main="Template",xlab="Time",ylab="Concentration",pch=18)) ## Use identify to identify each point by group number (to check) ## identify(Time,Concentration,col=mycolors[Group],labels=Group) ## Press Esc or press Stop to stop identify function ## Create legend ## Use locator(n=1,type="o") to find the point to align top left of legend box legend('topright',legend=levels(Group),col=mycolors,pch=18,title='Group')
Because the data that I created here is a small subset of my larger data, it may look like it can be approximated as a rectangular hyperbole. But I don't want to call a mathematical relationship between my independent and dependent variables yet.
nlrq from the package
quantreg may be the answer, but I don't understand how to use the function when I don't know the relationship between my variables.
I find this graph from a science article, and I want to do precisely the same kind of graph:
Again, thanks for your help!
Test.csv I was pointed out that my sample data is not reproducible. Here is a sample of my data.
I also tried qcbvnonpar::evd,but the curve doesn't seem very smooth.