Recently there was a Stack Exchange podcast which discussed the new "quality-score" algorithm that has been developed by the SE team (discussed from roughly 30min mark onwards).
The "quality-score" algorithm attempts to quantitatively score the quality of questions that are asked on SE sites by using machine learning (ML). The idea behind ML and the algorithm is to take questions from the past and train a model using certain characteristics so that predictions can be made for questions in the future on whether they are low quality or not (and then presumably do something if they are low quality, but we're not really interested in that part).
We (members of the Python SO Chat community) have been planning/working towards a similar open-source idea called Project Nidaba where we would use machine learning to predict low-quality/duplicate questions that we could then close-vote/delete-vote/edit as needed. We've recently re-built our sopython website (using a Python framework, obviously) and we're now looking towards working on Nidaba itself (making the announcement of the SE work in this podcast very timely).
I was wondering whether any of the developers who worked on the quality-score algorithm would be willing to share any of their insights into what they've done (more than is done so in the podcast itself). In particular any problems or particularly interesting parameters they used would be very useful to us. I understand that Vowpal Wabbit was used to construct your model whilst we'll probably use scikit-learn but any help/advice/information you could provide would be very useful.
Essentially we're looking for any info/advice to help us avoid re-inventing the wheel. All the work we produce for sopython is licensed using the BSD 3-clause licence and we'd love it if someday it could also benefit other communities within SO/SE.