I'm looking for a simpler way to aggregate and calculate percentages of a numerical variable using `data.table`

.
The following code outputs the desired result, my question is if there is a better way to get the same result. I'm not really familiarized with the package, so any tips would be useful.

I'd like to have the following columns:

```
second_factor_variable third_factor_variable factor_variable porc porcentaje
1: HIGH C > 200 0.04456544 4 %
2: LOW A 51 - 100 0.31739130 32 %
3: LOW A 101 - 200 0.68260870 68 %
4: LOW A 26 - 50 0.00000000 0 %
```

Where **porc** is the numerical percentage and **porcentage** would be the percentage rounded to be used as a label in a ggplot call.

```
library("ggplot2")
library("scales")
library("data.table")
### Generate some data
set.seed(123)
df <- data.frame(x = rnorm(10000, mean = 100, sd = 50))
df <- subset(df, x > 0)
df$factor_variable <- cut(df$x, right = TRUE,
breaks = c(0, 25, 50, 100, 200, 100000),
labels = c("0 - 25", "26 - 50", "51 - 100", "101 - 200", "> 200")
)
df$second_factor_variable <- cut(df$x, right = TRUE,
breaks = c(0, 100, 100000),
labels = c("LOW", "HIGH")
)
df$third_factor_variable <- cut(df$x, right = TRUE,
breaks = c(0, 50, 100, 100000),
labels = c("A", "B","C")
)
str(df)
### Aggregate
DT <- data.table(df)
dt = DT[, list(factor_variable = unique(DT$factor_variable),
porc = as.numeric(table(factor_variable)/length(factor_variable)),
porcentaje = paste( round( as.numeric(table(factor_variable)/length(factor_variable), 0 ) * 100 ), "%")
), by="second_factor_variable,third_factor_variable"]
```

### EDIT

I've tried agstudy's solution grouping by with just one variable, and I believe it didn't work for producing the labels (porcentaje column). In the real dataset, I ended up having a similar issue and I can't spot whats wrong about this function.

```
grp <- function(factor_variable) {
porc = as.numeric(table(factor_variable)/length(factor_variable))
list(factor_variable = factor_variable[1],
porc =porc,
porcentaje = paste( round( porc, 0 ) * 100 , "%"))
}
DT[, grp(factor_variable) , by="second_factor_variable"]
```

The numerical values are correct

```
DT2 <- DT[DT$second_factor_variable %in% "LOW"]
table(DT2$factor_variable)/length(DT2$factor_variable)
```

I believe the same problems appears if i group by with 2 factor variables:

```
DT[, grp(factor_variable) , by="second_factor_variable,third_factor_variable"]
```