Is this what you had in mind?

```
centroids <- aggregate(cbind(x,y)~class,df,mean)
ggplot(df,aes(x,y,color=factor(class))) +
geom_point(size=3)+ geom_point(data=centroids,size=5)
```

This creates a separate data frame, `centroids`

, with columns `x`

, `y`

, and `class`

where `x`

and `y`

are the mean values by class. Then we add a second point geometry layer using `centroid`

as the dataset.

This is a slightly more interesting version, useful in cluster analysis.

```
gg <- merge(df,aggregate(cbind(mean.x=x,mean.y=y)~class,df,mean),by="class")
ggplot(gg, aes(x,y,color=factor(class)))+geom_point(size=3)+
geom_point(aes(x=mean.x,y=mean.y),size=5)+
geom_segment(aes(x=mean.x, y=mean.y, xend=x, yend=y))
```

**EDIT** Response to OP's comment.

Vertical and horizontal error bars can be added using `geom_errorbar(...)`

and `geom_errorbarh(...)`

.

```
centroids <- aggregate(cbind(x,y)~class,df,mean)
f <- function(z)sd(z)/sqrt(length(z)) # function to calculate std.err
se <- aggregate(cbind(se.x=x,se.y=y)~class,df,f)
centroids <- merge(centroids,se, by="class") # add std.err column to centroids
ggplot(gg, aes(x,y,color=factor(class)))+
geom_point(size=3)+
geom_point(data=centroids, size=5)+
geom_errorbar(data=centroids,aes(ymin=y-se.y,ymax=y+se.y),width=0.1)+
geom_errorbarh(data=centroids,aes(xmin=x-se.x,xmax=x+se.x),height=0.1)
```

If you want to calculate, say, 95% confidence instead of std. error, replace

```
f <- function(z)sd(z)/sqrt(length(z)) # function to calculate std.err
```

with

```
f <- function(z) qt(0.025,df=length(z)-1, lower.tail=F)* sd(z)/sqrt(length(z))
```