HI, My question is both technical (using R) and statistical. I'm working on an image processing research project and I need to perform MCA. I previously posted a question on how to do this using Java Multivariate correspondence analysis (MCA) with JAVA, thanks to the answers I decided to do it using R. So here it is : I have a contingency table created from extracted features which has the form :

```
var1_1 var1_2 var1_3 var2_1 var2_2 var2_3 ... var18_1 var18_2 var18_3
```

individual1

individual2

individual3

individual4

...

individualn

In each cell i have a double value representing a normalized frequency count between 0.0 and 1.0. My ultimate goal is to be able to plot each individual on the different combination of axes using MCA.

What I did :

- used fdata <- read.table("filename.dat") to read the matrix file exported by Java
- used mca_obj <- dudi.acm(fdata,scann=FALSE, nf=3) That gives an error saying all values should be a factor
(Could someone clarify what does it mean a factor)- used burt_data=acm.burt(fdata, fdata) to use the burt method since I have many variables
- that gave me a very big table I couldn't understand (I experimented with removing the row names)

So to conclude : I know I'm sort of very close to finding the right way to perform MCA on my data I just need some hints on how to do it correctly. Can anyone please help!

Thanx