I want to divide a corpus into **training & testing sets** in a stratified fashion.

The observation data points are arranged in a *Matrix* `A`

as

```
A=[16,3,0;12,6,4;19,2,1;.........;17,0,2;13,3,2]
```

Each column of the matrix represent a distinct feature.

In Matlab, the `cvpartition(A,'holdout',p)`

function requires `A`

to be a vector. How can I perform the same action with `A`

as a *Matrix* i.e. resulting sets have roughly the same distribution of each feature as in the original corpus.

distribution of values in column1 of B1=distribution of values in column1 of B2=distribution of values in column1 of Aand same should hold for coulmn2 & colum3 also – sambhav jain Feb 9 '12 at 7:45