What is the best way to do random sample with replacement from dataset? I am using 316 * 34 as my dataset. I want to segment the data into **three** buckets but with replacement. Should I use the randperm because I need to make sure I keep the index intact where that index would be handy in identifying the label data. I am new to matlab I saw there are couple of random sample methods but they didn't look like its doing what I am looking for, its strange to think that something like doesn't exist in matlab, but I did the follwoing:

My issue is when I do this `row_idx = round(rand(1)*316)`

sometimes I get zero, that leads to two questions

- what should I do to avoid zeor?
What is the best way to do the random sample with replacement.

`shuffle_X = X(randperm(size(X,1)),:); lengthOf_shuffle_X = length(shuffle_X) number_of_rows_per_bucket = round(lengthOf_shuffle_X / 3) bucket_cell = cell(3,1) bag_matrix = [] for k = 1:length(bucket_cell) for i = 1:number_of_rows_per_bucket row_idx = round(rand(1)*316) bag_matrix(i,:) = shuffle_X(row_idx,:) end bucket_cell{k} = bag_matrix end`

I could do following:

```
if row_idx == 0
row_idx = round(rand(1)*316)
```

assuming random number will never give two zeros values in two consecutive rounds.