As you can tell from the post above(Which is just the return from the text in the question), it can pick up quite a lot. No of English words in each paragraph, # chars in each paragraph, bold, italic, upper and lower case
Meh, the numbers are all well and good, but finding a positive correlation between them and LQ stuff is going to be difficult, especially if it's purely based on basic paragraph stats.
So in answer to your question. I'd recommend creating a system which checks for several know characteristics of LQ posts where each filter employs various technologies and methods of classification; if the post matches any of them (or perhaps, create a scoring system, where each matched filter increases a post's "LQ score"), report the post.
@JacobGray sure
I'll have to go in a few mins, it's almost 3am here.
@AshishAhujaツ Whenever I next work on the bot, I'm thinking about regenerating all of the filters.
Accuracy is still having trouble because we started by tuning the filters way too high, and they're not going down very fast. So instead of generating the filters with %closed true positives and 0 false positives, I'm thinking %closed true positives and %open (divided by 2 or something maybe?) false positives. What do you think?
@NobodyNada Yup. That looks like a good idea. Maybe we might even add a few more filters. The main problem we're getting right now is we're not able to find a pattern in questions that need to be closed. Like spam posts have links and bad keywords, so that's a pattern.
@JacobGray I don't exactly get your meaning of crawl. It check the keywords in the links, sees patterns in them, blacklists them etc. Is that what you meant?
Plus, if you actually get a new good filter to detect spam, it is better to tell the developers of sd to add it, or do a PR as sd runs across the network.