I have two functions, `a`

and `b`

, that each take a value of `x`

from 1-3 and produce an estimate and an error.

```
x variable estimate error
1 a 8 4
1 b 10 2
2 a 9 3
2 b 10 1
3 a 8 5
3 b 11 3
```

I'd like to use geom_path() in ggplot to plot the estimates and errors for each function as x increases.

So if this is the data:

```
d = data.frame(x=c(1,1,2,2,3,3),variable=rep(c('a','b'),3),estimate=c(8,10,9,10,8,11),error=c(4,2,3,1,5,3))
```

Then the output that I'd like is something like the output of:

```
ggplot(d,aes(x,estimate,color=variable)) + geom_path()
```

but with the thickness of the line at each point equal to the size of the error. I might need to use something like `geom_polygon()`

, but I haven't been able to find a good way to do this without calculating a series of coordinates manually.

If there's a better way to visualize this data (y value with confidence intervals at discrete x values), that would be great. I don't want to use a bar graph because I actually have more than two functions and it's hard to track the changing estimate/error of any specific function with a large group of bars at each x value.