Cool, Thanks!

On Mon, Dec 5, 2011 at 8:12 PM, Mathieu Blondel <[email protected]>wrote:

> On Mon, Dec 5, 2011 at 9:05 PM, xinfan meng <[email protected]> wrote:
> > I understand that the LogisticRegression would be similar to LinearSVC in
> > terms of performance. However, I am  repeating other person's experiment.
> > Still, Thank you.
>
> Paolo Losi has some code that implements Platt's method (internally
> used by libsvm) in a general fashion:
>
>
> https://github.com/paolo-losi/scikit-learn/blob/calibration/scikits/learn/calibration/platt.py
>
> It's not merged in scikit-learn yet so I guess you can copy-paste the
> code for now.
>
> Mathieu
>



-- 
Best Wishes
--------------------------------------------
Meng Xinfan(蒙新泛)
Institute of Computational Linguistics
Department of Computer Science & Technology
School of Electronic Engineering & Computer Science
Peking University
Beijing, 100871
China
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