I am using the `rlm`

R package and experimenting with robust regression using the Huber function. Here is my code:

```
myfit= rlm(formula = depvar ~ indep1+indep2, init="ls",data = my_input_data,psi =psi.huber, k=0.99,method = "M", maxit=200)
```

`k`

is the tuning parameter for the Huber function (`psi.huber`

), which I set to `0.99`

in my code above.

However, the default specified in the `rlm`

R documentation is `k = 1.345`

.

I would appreciate any insights if it is commonly acceptable in statistics to change this tuning parameter. And is there any way to automatically determine this parameter through some optimization?