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3:25 AM
Hello everyone!
I'm finally free from school!
 
Yay!
 
And I practically aced my math final :D
How's it been?
 
 
5 hours later…
8:38 AM
Hello
@Rishav @zondo My OS problem solved I think I'm visiting this room more from now on
 
 
1 hour later…
10:00 AM
@HITMAN Hey!
 
user6845426
10:48 AM
0/
 
12:28 PM
@HITMAN Great! What was your OS problem?
 
12:46 PM
@AndrewLi Welcome to college.
@Rishav You might be interested in this behindwoods.com/news-shots/…
Three goddamn internships.
 
1:04 PM
@littlepootis I think he meant done for the year, not done high school.
 
1:54 PM
@littlepootis Does India have that many companies offering internships though? :P
Hey @dipper
 
user6845426
waddap
 
Reading about neural networks
 
user6845426
How you getting on :)
 
Just started
 
user6845426
2:11 PM
I've done a little bit with NN's
 
@littlepootis Heh. I'm going into high school
 
Oh you were in middle school all this while?
Boy, you're young.
 
Yeah
:P
 
user6845426
booooooy
 
3:29 PM
I'm working on a bot that tries to determine if a suggested edit is bad. Each change in the edit (determined by difflib.SequenceMatcher) is run through a series of tests. If enough of the changes have negative test results, the edit will be presented in the SOBotics chat room to be reviewed.
I would like to have machine learning to determine which tests are most accurate. (Each test is a function). For example, the test to see if language names are
being formatted as code would indicate a bad change, but that might pass if the
rest of the changes were good. The test to see if a spam link is being inserted,
however, would be inexcusable. Weights could be given to the tests by a human,
but I would like to see if the machine can figure it out based on true/false fee
dback on its chat posts. Does anybody have any ideas?
 
user6845426
4:00 PM
Sounds interesting
 
user6845426
Could you run each link through Google's page ranking to get a score on its authenticity?
 
Possibly. I hadn't thought of that. Actually, I wasn't even planning on writing something like that. I just thought of it for an example.
 
user6845426
What will you be looking for in terms of a bad edit?
 
So far, this:
snippets for non-HTML/JavaScript/CSS code
Img tags with URLs that don't include a host
SCSS in the CSS box
`$` appears as an identifier in the JavaScript but there are no libraries included in the snippet
language names formatted as code
But I'm open to more suggestions.
These are just the beginning steps.
 
user6845426
Im trying to think how you could utilise ML techniques
 
4:09 PM
Well, the point is to figure out which tests should have more weight.
 
user6845426
That would depend on how strict you want to be with it?
 
That is how strict I want to be with it. If 98% of the edits with a single spam link are marked as bad by human reviewers, two spam links will be pretty much guaranteed to be bad. If only 50% of the edits that de-capitalize an i are marked as bad, that seems to be a pretty bad test.
 
user6845426
Right
 
I've also never done machine learning before, so I might be taking on more than I can handle.
 
user6845426
Could you make a ranking system based on your various tests... and then use some type of supervised learning method to make a final prediction?
 
user6845426
4:22 PM
Supposing you can get enough training data
 
Yeah, that's the idea. The problem is how can I rank each test when there are multiple tests per edit, and each test might be positive for multiple changes in the edit, while the feedback is merely yes or no?
 
user6845426
Well
 
user6845426
For example, say you want to check for certain key words in some text... you can create a function which does just that and records the number of times a certain key word is mentioned right? Depending on the number of key words you are looking for and how important they are you can create some output.
 
user6845426
Then after each test you've tried, you'll get output values, which you can use as inputs to a learning algorithm
 
user6845426
So you'd run your tests first, and their outputs will be examined in your learning algorithm which will make a final prediction
 
user6845426
4:31 PM
If you use some optimisation algorithm along side that (and have some labelled test data), you can adjust the weights accordingly
 
user6845426
Does that make sense?
 
Well, the general flow makes sense. I just don't know how to implement it.
 
user6845426
All great inventions start with beer
 
user6845426
How are you obtaining these edits btw? are you pulling them automatically?
 
Yeah, I'll get the recent suggested edits through the API.
 
user6845426
4:45 PM
And what will your first test consist of? Start off easy ;)
 
The tests are the easy part. It's the learning algorithm that I need help with.
 
user6845426
Ok so rank your outputs and explore different models?
 
user6845426
NN, regression?
 
user6845426
Try a basic NN
 
user6845426
I don't mind offering my assistance (if i can... i only know basics)
 

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