Dear community, First of all, apologies, I'm pretty newbie, and maybe have not truly understood this multiple correspondence analysis. I have 9 categorial variables with 15, 12,12,7,9,11,8 ,4 , 31 levels respectively; that is 109 levels. (*By the way, is there any problem because of having different levels at each factor in the matrix of data ??*) I want to know which are the levels (maybe i should say variables ? ) that explain more variance in the set of categorical variables. After reading help files i decided for mydata.mjcaADJ <- mjca(mydata, lambda = "adj"). And now, i wanted to plot: plot(mydata.mjcaADJ, labels= c(0, 2), col=c("white", "black")) But I cannot see anything, as the labels superimpose. How could I see all the labels? It has occured to me to plot just the levels that have higher qualities. But as I said I don't if this really makes sense, and if it had, how to select this data in the commnad plot? If it is needed that I upload my data, just tell me. Thanks in advance, user at host.com -- View this message in context: http://r.789695.n4.nabble.com/plot-mjca-lambda-adjusted-tp4617675.html Sent from the R help mailing list archive at Nabble.com.