# Ordinary Least Squares Regression in Vowpal Wabbit

Has anyone managed to run an ordinary least squares regression in Vowpal Wabbit? I'm trying to confirm that it will return the same answer as the exact solution, i.e. when choosing a to minimize ||y - X a||_2 + ||Ra||_2 (where R is the regularization) I want to get the analytic answer a = (X^T X + R^T R)^(-1) X^T y. Doing this type of regression takes about 5 lines in numpy python.

The documentation of VW suggests that it can do this (presumably the "squared" loss function) but so far I've been unable to get it to come even close to matching the python results. Becuase squared is the default loss function, I'm simply calling

vw-varinfo input.txt

where input.txt has lines like

1.4 | 0:3.4 1:-1.2 2:4.0 .... etc

Do I need some other parameters in the VW call? I'm unable to grok the (rather minimal) documentation.

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Unclear what the question is here. Can you provide more information explaining what you expect versus what you get? –  Spaceghost Oct 8 '13 at 15:14
Remember that vw is an online algorithm which updates the weights of the model (coefficients of the OLS) only slightly for every example and never goes back or out of order. If you want to get performance similar to a batch algorithm especially when the number of examples is not much larger than the number of features, you'll probably need to run multiple passes on the input until convergence (e.g `-c --passes 100`) . –  arielf Nov 15 '13 at 23:45
"--loss_function classic" will give vanilla least squares. "--loss_function squared" often outperforms it, because it has 'Online Importance Weight Aware Updates' (see: arxiv.org/abs/1011.1576) –  Pake Beet Jul 2 '14 at 3:00

``````vw -d input.txt -f linear_model -c --passes 50 --holdout_off --loss_function squared --invert_hash model_readable.txt