It's unclear if you have your list of factors already or not. If you do not have it, and are taking it from the data set, you can grab it in a few different ways:

```
# Get a list of all the factors
myFactors <- levels(Data[[1]]) # If actual factors.
myFactors <- sort(unique(unlist(Data))) # Otherwise use similar to this line
```

Then to calculate the Totals per factor, you can do the following

```
Totals <-
colSums(sapply(myFactors, function(fctr)
# calculate totals per fctr
as.integer(Data$peso) * rowSums(fctr == subset(Data, select= -peso))
))
names(Totals) <- myFactors
```

Which gives

```
Totals
# 1 2 3 4 5 6 7 8 9 10
# 132 153 142 122 103 135 118 144 148 128
```

Next:
I'm not sure if afterwards, you want to compare to the sum of peso or the sum of the totals. Here are both options, broken down into steps:

```
# Calculate the total of all the Totals:
TotalSum <- sum(Totals)
# See percentage for each:
Totals / TotalSum
Totals / sum(as.integer(Data$peso))
# See which, if any, is greater than 50%
Totals / TotalSum > 0.50
Totals / sum(as.integer(Data$peso)) > 0.50
# Using Which to identify the ones you are looking for
which(Totals / TotalSum > 0.50)
which(Totals / sum(as.integer(Data$peso)) > 0.50)
```

### Note on your sampling for Peso

You took a sample of `0:3.5`

, however, the `x:y`

sequence only gives integers.
If you want fractions, you can either use `seq()`

or you can take a larger sequence and then divide appropriately:

```
option1 <- (0:7) / 2
option2 <- seq(from=0, to=3.5, by=0.5)
```

If you want whole integers from 0:3 and also the value 3.5, then use c()

```
option3 <- c(0:3, 3.5)
```

`sum(Totals)`

or the`sum(Data$peso)`

? – Ricardo Saporta Nov 16 '12 at 19:20