I am trying to analyze the result of linear regression using lm() and optim().

Actually, the result from lm() function is very easy to plot or analyze by related functions,such as:

```
fit <- lm(y~x1+x2, data=dat)
# I can plot 'Fitted values', 'Theoretical Quantiles', 'Fitted values' and 'Leverage' by plot() easily.
plot(fit)
durbinWatsonTest(fit)
```

But the result from optim() could not be accepted by plot() or other functions, such as:

```
> result.opt <- optim(par = c(0, 0, 0, 0,0, 0, 0),
min.OLS,
data = dat
)
> result.opt
$par
[1] 811.06933 285.10077 -476.69048 144.11307 273.46945 -30.65947 -279.02271
$value
[1] 152364.6
$counts
function gradient
502 NA
$convergence
[1] 1
$message
NULL
> plot(result.opt)
Error in xy.coords(x, y, xlabel, ylabel, log) :
'x' is a list, but does not have components 'x' and 'y'
```

What package or method can do result analysis as plotting lm's result?

Thanks in advance.

`optim()`

is a general purpose optimization tool. You could pass it just about anything to optimise and it would give it a go, but how would a package writer know that what you did with`optim()`

is an OLS fit but the what some other Joe did with`optim()`

was a GLMM fit for example? What works for one type of fit is unlikely to work for another. You'll just have to work on this yourself, perhaps by wrapping the`optim()`

call in something else that generates the extra information needed for such plots. – Gavin Simpson Jan 9 '14 at 5:40`stats4::mle`

: it is just a wrapper around`optim`

, but it adds all the information you may find interesting when fitting a model via maximum likelihood -- and there is also a`plot`

method. – Vincent Zoonekynd Jan 9 '14 at 13:02`plot.mle`

function.`bbmle::mle2`

has slightly more functionality, although maybe not what you're looking for. – Ben Bolker Jan 9 '14 at 13:33`plot`

method for`profile.mle`

objects. – Vincent Zoonekynd Jan 9 '14 at 15:45