site title

Stack Exchange Machine Learning Contest

Over the last 4 years we’ve built up quite a bevy of moderation tools here at Stack Exchange.  We’ve got closing, editing, deleting, flags of all sorts, voting, commenting, review queues, and more.

Plus our super secret mod tools.

These all work great, but they all require action after a post is made. This is a lot of work for the community, and not particularly friendly toward those posting, particularly new users. In a perfect world, we’d be able to offer specific, targetted guidance for authors whose posts were likely to be shot down, before they ever showed up on the site, and without requiring as much up-front effort from our community.

We’ve already expended some effort on this front with some basic tests that reject obviously problematic questions, and automatically flag borderline ones for review, but we feel this can be done much better.

This is where you come in

We’re running a machine learning contest on Kaggle to find an algorithm that predicts whether (and for what reason) a question will be closed.


The idea is simple: we’ve prepared a dataset with all the questions on Stack Overflow, including everything we knew about them right before they were posted, and whether they finally ended up closed or not.  You grab the data, build your brilliant classifier, run it against some leaderboard data and submit your results.  Rinse and repeat until the contest ends, when we’ll grab the most promising classifiers and run them against fresh data to choose winners.

The winners will get our respect, the knowledge they’ve helped make the Internet a better place – oh, and some cold hard cash.

  • 1st prize – $11,000
  • 2nd prize – $6,000
  • 3rd prize – $2,000
There’s also a $1,000 prize for the best visualization of our data.

We’re also hiring a full-time data scientist, and we’re going to be very interested in talking to the authors of the best classifiers.

So head on over now and…

Check out the contest

Some explanation of how we’ll use the classifiers that come out of the contest, as there seems to be some confusion on that point.

First and foremost, there’s no plan to “auto close” questions. Human oversight will always be needed, there are always edge cases, evolving standards, and what-have-yous that won’t be captured in any algorithm.

What we’d be really excited to try out is giving users who are composing questions advice on how to improve them while they’re composing them. This would save a lot of time, reduce the overall close rate, and make new users’ first asking experience more likely to be a pleasant one.

A secondary goal is to improve our auto-flagging of questions, as our current system is very simple and has some known issues.


Will you be comparing results with questions that SHOULD BE closed, or that actually ARE closed?

Because there are many questions that should be closed that aren’t, and even some that are closed that should not be. The determining factor is how many people view them, and what actions those people decide to take on the post.

Also, are you looking for an algorithm to be for SO only? Or something that can be tweaked for other SE sites as well?

Kevin Montrose author Aug 21 2012

Woops, fat fingered some dates there.

The Timeline (linked from the dates) goes into greater detail, but you basically have to *finish* your model by the 9th of October. The actual judging goes on for a while longer, but you can’t change your submission past the 9th.

Kevin Montrose author Aug 21 2012

@Rachel we’re using questions that are actually closed, it’s impractical to hand curate enough questions.

We’re not terribly concerned by the questions that aren’t closed or those that were incorrectly closed being in the data set, as there’s so much data those few outliers shouldn’t matter. Obviously we’ll evaluate the predictions for those subtleties before we incorporate any of these algorithms, but for the purposes of the contest we need really concrete criteria.

To be clear, we’re not intending to have an algorithm automatically close posts. This is aimed at improving our quality metrics (which guide users before posting) and auto-flagging facilities (which help focus moderation attention).

We’re using SO for the contest because we’re confident we have enough data, if the results are generalize-able to the rest of the network we’ll do so.

I presume absent a perfect solution you’d rather have it close too few questions rather than too many?

Andomar Aug 21 2012

IMHO most closes are pointless insults to well-meaning users. Often new users too. Nothing says “welcome to superuser” like “your post was closed as a duplicate of a 3 year old Windows XP question”.

I think that closing should be reduced, not automated.

Giszmo Aug 21 2012

@Andomar: The better posts are categorized before mods judge about closing them, the better work they can do. Wrong decisions will surely get fewer if mods can concentrate on fewer questions to be moderated, but: As I understood the assignment it is also intended to give the poster feedback on how to “improve” his post so it doesn’t raise the red flags.

Interesting problem, but I’d rather not help automate the obnoxious closing of interesting questions.

Ben Brocka Aug 21 2012

Due to the apparent flip outs here/on Hacker News maybe the original post should clarify you’re trying to automate helping people form better questions, not automate closing

I think some additional data about users would really help here:
– time, score, status (open, accepted, closed for X) title and body of each of their previous posts (up to 10?)
– geographic region of user

Kevin Montrose author Aug 21 2012


Yeah, the mis-comprehension is a bit surprising. The idea that we’d automate moderation is so crazy I don’t even know how’d you jump to that conclusion. Anyway, added some extra “what we’d use it for” text at the end.


What we provided for this contest is a) public and b) currently available at post time in our code. We grabbed a little bit more that we’re quite sure is important (undeleted answers), but we had to draw a line somewhere.

Presumably any approach could always benefit from more data, so when/if we incorporate any new algorithms we can always make improvements with new data.

Wow, this is actually, genuinely truly a great idea.

I love it.

That is all. :)

I think the prize should also include some Stack Overflow rep and/or badges!

Tim Post Aug 21 2012

@Mark – I don’t think they’ll ever hand out wholesale blocks of rep unless it comes from someone else (conceivably, Joel and Josh could slice some of their points off and give them to you).

But badges for those who positively participated would be neat. I’m really thinking about tossing my hat into the ring, just thinking hard on if I’m going to have enough time.

Why would the learning engine be not best suited to being given the actual reason a post was closed a ‘1’ and every other reason a ‘0’ (or vice-versa, if I got the numbering wrong)? Perhaps I have misunderstood how learning algorithms work.

Great Idea. I love automating stuffs, I’ll help on the contest too.

I just hope the resulting logic/algorithm are very good enough to use on other SE sites as well :)

FloPes Aug 22 2012

So I know what hellban and slowban is, but what in the name of the giant spaghetti monster is “dispatch black helicopters”, “irradiate” and “taunt user”? And more importantly: What do they do?

Apart from that: Nice idea, yet I am very unsure about wether such a system wouldn’t produce many false positives…

This is the best way to find the brightest solution..keep it up…good work…I love StackExchange and StackOverflow

i hope we will find an algorithm in this contest which will be able to a nice verdict with all questions and specially with the new users.

This is pretty cool. So we’ll know how we each individually did on the private testing right? I’m in high school and not really expecting to win, but I have been doing data mining this summer and I want to see if what I researched will apply to this situation too.

Does the training and evaluation data include questions that were closed and then later deleted? Many of the worst closed questions end up being deleted, and I know that deleted questions don’t show up in the regular SE data dumps. Are these included here?

If not, we could be missing a bunch of really good examples for questions that were closed and were so bad they ended up deleted. Also, the system auto-deletes closed questions with no votes and no answers after a certain period of time, if I’m not mistaken, so a lot of older closed questions could be left out of this set.

Kevin Montrose author Aug 22 2012

@Brad the training and evaluation data sets are using public data, so there are no deleted questions (I suppose some of them have probably been deleted *since* the dump, but nothing was at the time).

Similar reasoning as my reply to Rachel, any solution should benefit from more data so we’re not concerned about these omissions. A lot of the stuff that gets deleted our existing systems already finds pretty well too (especially spam, which is the big close then immediately delete case).

By using public data we don’t have to go through the hassle of NDA’ing everyone who wants to participate, which I think is a big win with very little practical downsides.

Chuck Bassett Aug 22 2012

I don’t expect to build a competitive entry but this is still a very cool idea dealing with a chunk of Computer Science I’ve never had cause to dig into. What a fun opportunity for a short-term coding project.

For anyone else in my shoes: if you are looking for a survey of the field, Professor Nilsson of Stanford University makes the early draft version of his (now slightly aged) book “Introduction to Machine Learning” available at no on his department website at [](

/Do stack overflow formatting conventions apply on the blog?

wax_eagle Aug 22 2012

@kevin that makes the sample biased if you’re not including everything in your dataset. You’d really have to NDA for something that is available to 10k users?

Even if you can’t afford to manually clean up the training data, I’d strongly encourage you to clean up the test data. Beyond a certain point, increasing test set size doesn’t help if the data is noisy, so a smaller more carefully annotated test set can be more valuable than a large noisy one.

I am in the same boat as you. Are you planning on doing any design/coding on this contest project?

Ivan Fragoff Aug 22 2012

Maybe as the user types the question, have a continuous query of already posted questions display relevant results. Kind of like dynamic search fields now behave in search engines.
It might not prevent the post, but could steer the user towards an existing discussion, something that they’ve missed when they searched SO before asking the question.

Lipis Aug 22 2012

There is a new book that was just released regarding Machine Learning..! Maybe it’s a good idea to purchase it if you want to win the competition :)

I posted a question (on the forum for kaggle) as I figure I might not be the only person lost. See here:

I’m not sure I get what the goal of the contest is… Are you looking for the Algorithm? Just the Results as compared to the existing data set? Both?…

Another possibility would be to separate the question field into several fields, more precise. The questions are always closed for the same reasons, and by reversing these reasons you would come with something like:

Programming techonologies:
Your question:
What is the error you get:
What have you tried:

In other words, improving your user interface to avoid error handling.

Andrey Aug 24 2012

I think it is impossible to fully automate this task. Here is example of question: I have an error. And there goes code. If code is clear and self explainable it is normal question. If code is just taken from context, with variables, functions and classes that are defined elsewhere this question will be closed in few seconds. These questions are almost identical and can hardly be differentiated.

Kevin Montrose author Aug 24 2012


It’s a good thing we’re not trying to automate it then :)

This contest is about getting better tools in our moderation & guidance toolboxes, not about replacing them with Robot Overlords™.

It would be interesting what would be done with machine learning on detection answers that are likely to be deleted as “not an answer”, so they can be fed into a new review tag. I expect this is a lot easier problem to look at.

Also using machine learning to work out the question a given user is most likely to be able to get an up voted answer on.

bilal ahmed yaseen Aug 30 2012

kindly anyone or the competition organizer can give me sample data set for this competiton problem.

mail me at :


bilal ahmed yaseen

Can we use the dump data as research data for my personal paper?

What happened to the job opening for Stack Exchange Data Scientist?
This post mentioned it here:

We’re also hiring a full-time data scientist, and we’re going to be very interested in talking to the authors of the best classifiers.

but when I clicked the link
it returned:
“Job Not Found: Sorry, we couldn’t locate that job listing.”
Perhaps you have filled the position?

@Feral yes, it’s filled.

Eriic Q Oct 10 2012

I am kind of new to statistics, but I found the problem interesting to look at. My thoughts as a beginner, is that some questions are poorly written, I guess in some cases because the author doesn’t know (or don’t care) how to properly write a question which will trigger an answer (and I am guilty of that too when in retrospect I look at some questions I asked).
On many subject it help to deconstruct the problem one is facing to solve it, in order to do so having a range of aspects on the questions to fill can help the author to write his questions for instance:
– describing his own experience in the field of the question
– describing what have been tried to so far to answer the problem, and what was the effect.
– describing external reference on the topics that have been studied and the effect on the topic.
– giving some context around the questions.
Ideally this set of questions should be write by the experts in the field. then until the users have reach a level of the reputation they should have to answer theses subtopic of their questions.
The advantages for teh site is that divided in subtopic, it will be easier to spot the lack of interest of the author, ie instead of having to make sense of unstructured text, it will be semi-structure text (controling the content will be much easier).
The advantage for the authors, at least the one new to the field who want to progress it will give them a kind of rudimentary framework to ask themselves first what to do to find the answer. In time one can hope that because they get better answers they progress faster.
And for the ones answering the questions it will ease their work and maybe allow them to find way to answer the questions more efficiently.
Hope it could help.