I am trying to plot lines of best fit to a cumulative density I am representing the results using a reciprobit plot (log latency vs probit cumulative probability).

```
grp<-c("g1","g1","g1","g1","g2","g2","g2","g2","g3","g3","g3","g3")
lat<-c(1, 4, 6, 8, 2, 3, 7, 9, 1, 4, 8, 8)
data<-data.frame(grp,lat)
d.f <- arrange(data,grp,lat) # sort data into ascending values
d.f.ecdf <- ddply(d.f, .(grp), transform, ecdf=ecdf(lat)(lat) ) #
calculate ecdf
p <- ggplot( d.f.ecdf, aes(lat, ecdf, colour = grp) )
p+geom_point()+
scale_x_log10()+
scale_y_probit()
```

All ok up to this point but if I add

```
p+scale_y_probit()+geom_smooth()
```

OR

```
p+scale_y_probit()+stat_smooth()
```

i get the error: Error: NA/NaN/Inf in foreign function call (arg 1)

It works with most other distributions, for example

```
p+geom_point()+
scale_x_log10()+
scale_y_inverse()+
geom_smooth()
```

Is there any way around this issue?