We'll be talking about this more in 2019, but we're able to pretty reliably detect certain types of questions that have a history of going over quite poorly. Simple heuristics detect a lack of code in otherwise terse questions currently, along with some other basic checks, but we can also (now) pretty accurately scope what looks like a homework assignment and maybe provide some pretty strong guidance up front, so people's expectations are set accordingly.
As we dove into unwelcoming comments, one of the phrases that surfaced the most was (unsurprisingly): "homework". So setting the goal of detecting "bad quality" is the wrong way to go, detecting with a high degree of certainty certain kinds of questions that we can model can help us better set people's expectations (and help certain questions go straight to the close queue instead of clogging up the helper queue).
I can't say too much more about this because it's all highly experimental and it was only yesterday that I learned what a confusion matrix was and how it worked, so.. but we're taking some stretches in this direction, at least in 'stack labs' as I've come to call it.
Look for posts by Jason Punyon, Julia Silge, and Kevin Montrose next year, as they've got a ton of this to talk about. I'm only mentioning that we're looking in this direction because the wizard, upon breaking questions down into basic components, does strongly lend to the idea of systems that are way more superior than the current (inadequate) static analysis that we do.