The answer provided by rcs works and is simple. However, if you are handling larger datasets and need a performance boost there is a better alternative:

```
> library(data.table)
> data = data.table(Category=c("First", "First", "First", "Second", "Third", "Third", "Second"), Frequency=c(10,15,5,2,14,20,3))
> data[,sum(Frequency),by=Category]
Category V1
1: First 30
2: Second 5
3: Third 34
> system.time( data[,sum(Frequency),by=Category] )
user system elapsed
0.008 0.001 0.009
```

Let's compare that to the same thing using data.frame and the above above:

```
> data = data.frame(Category=c("First", "First", "First", "Second", "Third", "Third", "Second"), Frequency=c(10,15,5,2,14,20,3))
> system.time( aggregate(data$Frequency, by=list(Category=data$Category), FUN=sum) )
user system elapsed
0.008 0.000 0.015
```

And if you want to keep the column this is the syntax:

```
> data[,list(Frequency=sum(Frequency)),by=Category]
Category Frequency
1: First 30
2: Second 5
3: Third 34
```

The difference will become more noticeable with larger datasets, as the code below demonstrates:

```
> data = data.table(Category=rep(c("First", "Second", "Third"), 100000), Frequency=rnorm(100000))
> system.time( data[,sum(Frequency),by=Category] )
user system elapsed
0.055 0.004 0.059
> data = data.frame(Category=rep(c("First", "Second", "Third"), 100000), Frequency=rnorm(100000))
> system.time( aggregate(data$Frequency, by=list(Category=data$Category), FUN=sum) )
user system elapsed
0.287 0.010 0.296
```