The density of each block would be `V2 / sum(V2)`

assuming that each row is a separate block.

For your data

```
dat <- data.frame(V1 = 1:6, V2 = c(11613, 6517, 2442, 687, 159, 29))
```

I get:

```
> with(dat, V2 / sum(V2))
[1] 0.541474332 0.303865342 0.113862079 0.032032452 0.007413624 0.001352170
```

Which we can check using R's tools. First expand your compact frequency table

```
dat2 <- unlist(apply(dat, 1, function(x) rep(x[1], x[2])))
```

Then use `hist()`

to compute the values we want

```
dens <- hist(dat2, breaks = c(0:6), plot = FALSE)
```

Look at the resulting object:

```
> str(dens)
List of 7
$ breaks : int [1:7] 0 1 2 3 4 5 6
$ counts : int [1:6] 11613 6517 2442 687 159 29
$ intensities: num [1:6] 0.54147 0.30387 0.11386 0.03203 0.00741 ...
$ density : num [1:6] 0.54147 0.30387 0.11386 0.03203 0.00741 ...
$ mids : num [1:6] 0.5 1.5 2.5 3.5 4.5 5.5
$ xname : chr "dat2"
$ equidist : logi TRUE
- attr(*, "class")= chr "histogram"
```

Note the `density`

component which is:

```
> dens$density
[1] 0.541474332 0.303865342 0.113862079 0.032032452 0.007413624 0.001352170
```

Which concurs with my by-hand calculation from the original frequency table representation.

As for the plotting, if you just want to draw densities instead then try:

```
dat <- transform(dat, density = V2 / sum(V2))
plot(density ~ V1, data = dat, type = "n")
lines(density ~ V1, data = dat, col = "red")
```

If you want to force axis limits do:

```
plot(density ~ V1, data = dat, type = "n", ylim = c(0,1))
lines(density ~ V1, data = dat, col = "red")
```