It can be done using `stat_sum`

within ggplot2. By default, the dot size represents proportions. To get dot size to represent counts, use `size = ..n..`

as an aesthetic. Counts (and proportions) by a third variable can be obtained by weighting by the third variable (`weight = cost`

) as an aesthetic. Some examples, but first, some data.

```
library(ggplot2)
set.seed = 321
# Generate somme data
df <- expand.grid(x = seq(1:5), y = seq(1:5), KEEP.OUT.ATTRS = FALSE)
df$Count = sample(1:25, 25, replace = F)
library(plyr)
new <- dlply(df, .(Count), function(data) matrix(rep(matrix(c(data$x, data$y), ncol = 2), data$Count), byrow = TRUE, ncol = 2))
df2 <- data.frame(do.call(rbind, new))
df2$cost <- 1:325
```

The data contains units categorised according to two factors: X1 and X2; and a third variable which is the cost of each unit.

Plot 1: Plots the **proportion** of elements at each X1 - X2 combination. `group=1`

tells ggplot to calculate proportions out of the total number of units in the data frame.

```
ggplot(df2, aes(factor(X1), factor(X2))) +
stat_sum(aes(group = 1))
```

Plot 2: Plots the **number** of elements at each X1 - X2 combination.

```
ggplot(df2, aes(factor(X1), factor(X2))) +
stat_sum(aes(size = ..n..))
```

Plot 3: Plots the cost of the elements at each X1 - X2 combination, that is `weight`

by the third variable.

```
ggplot(df2, aes(x=factor(X1), y=factor(X2))) +
stat_sum(aes(group = 1, weight = cost, size = ..n..))
```

Plot 4: Plots the proportion of the total cost of all elements in the data frame at each X1 - X2 combination

```
ggplot(df2, aes(x=factor(X1), y=factor(X2))) +
stat_sum(aes(group = 1, weight = cost))
```

Plot 5: Plots proportions, but instead of the proportion being out of the total cost across all elements in the data frame, the proportion is out of the cost for elements within each category of X1. That is, within each X1 category, where does the major cost for X2 units occur?

```
ggplot(df2, aes(x=factor(X1), y=factor(X2))) +
stat_sum(aes(group = X1, weight = cost))
```