I'm trying to plot an exponential decay line (with error bars) onto a scatterplot in ggplot of price information over time. I currently have this:

```
f2 <- ggplot(data, aes(x=date, y=cost) ) +
geom_point(aes(y = cost), colour="red", size=2) +
geom_smooth(se=T, method="lm", formula=y~x) +
# geom_smooth(se=T) +
theme_bw() +
xlab("Time") +
scale_y_log10("Price over time") +
opts(title="The Falling Price over time")
print(f2)
```

The key line is in the geom_smooth command, of `formula=y~x`

Although this looks like a linear model, ggplot seems to automatically detect my scale_y_log10 and log it.

Now, my issue here is that date is a date data type. I think I need to convert it to seconds since t=0 to be able to apply an exponential decay model of the form `y = Ae^-(bx)`

.

I believe this because when I tried things like y = exp(x), I get a message that I think(?) is telling me I can't take exponents of dates. It reads:

```
Error in lm.wfit(x, y, w, offset = offset, singular.ok = singular.ok, :
NA/NaN/Inf in foreign function call (arg 1)
```

However, `log(y) = x`

works correctly. (y is a numeric data type, x is a date.)

Is there a convenient way to fit exponential growth/decay time series models within ggplot plots in the geom_smooth(formula=formula) function call?

`geom_smooth(method="glm",family=gaussian(link="log"))`

? – Ben Bolker Apr 3 '12 at 20:33`Error in eval(expr, envir, enclos) : cannot find valid starting values: please specify some`

– Mittenchops Apr 3 '12 at 20:42