# how to set parameter for robust regression?

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?

## 1 Answer

I think this might give you some pointers how to interpret the value of `k`: http://www.iwaenc.org/proceedings/1997/nsip97/pdf/scan/ns970534.pdf `k` is a borderline value of central Gaussian part of the distribution. Depending on the data, you might want to reduce or increase efficiency of regressor estimator (1.345 corresponds to 95% efficiency: https://cran.r-project.org/web/packages/robustbase/vignettes/psi_functions.pdf).

• thanks. When we say 95% efficiency....do we mean in terms of computation speed? that is, if k is reduced computation is faster? – user121 Mar 6 '18 at 8:11
• Nope, it's a statistical efficiency (en.wikipedia.org/wiki/Efficiency_(statistics) ). But explaining that in detail is a bit over my head, you might be better off if you try Cross Validated. – PSzczesny Mar 6 '18 at 9:25