Jul 23, 2018 08:56
see this would work
Jul 23, 2018 08:56
Jul 20, 2018 07:54
Do access the link and join
Jul 20, 2018 07:54
Jul 20, 2018 06:37
let me try and get back to you
Jul 20, 2018 06:37
I din't know about that
Jul 20, 2018 06:36
Hey man
Jul 16, 2018 02:03
yeah it is private
Jul 16, 2018 02:03
That is really true man.
Jul 10, 2018 08:06
how was the trip?
Jul 10, 2018 08:06
interesting!
Jul 10, 2018 08:06
Jul 9, 2018 01:34
where did you go for holidays?
Jul 9, 2018 01:34
yeah man I think we can use slack or something.
Jun 27, 2018 03:26
hello
Jun 17, 2018 05:05
how are things?
Are they any good?
Jun 12, 2018 08:05
*possible
Jun 12, 2018 08:05
*bossible
Jun 12, 2018 08:05
so working on them to make it as better as possbile
Jun 12, 2018 08:05
*developed models
Jun 12, 2018 08:04
hmm still din't deploy my development
Jun 12, 2018 07:52
completely busy
 
Jun 17, 2018 13:32
hmmmm yeah it give weight to the minority class so that it can replicate and balance them
Jun 17, 2018 13:26
Good Night to you as well
Jun 17, 2018 13:26
It is night over here
Jun 17, 2018 13:25
Thank you so much for appreciating
Jun 17, 2018 13:25
that was my presentation to my manager and CTO to show them how I used ML for showing them results
Jun 17, 2018 13:14
hmmm because the way SMOTE works is good for complex cases and normal over sampling works better for normal cases.

Complex cases by which I mean the data is too sparse
Jun 17, 2018 13:04
so we need to be careful
Jun 17, 2018 13:04
but the other side of the coin, the synthetic values which it inserts might not be logical
Jun 17, 2018 13:03
the reason is it replicates the rare cases and because of that the balancing of class is better
Jun 17, 2018 13:03
for oversampling using SMOTE, you can expect better results
Jun 17, 2018 13:03
hmm because the way it works is different
Jun 17, 2018 13:01
:)
Jun 17, 2018 13:01
ohk man!
All the Best!
Do let me know if you have any other questions. would love to help!
Do accept the answer if you got what you are looking for!
Jun 17, 2018 12:59
got what you are looking for?
Jun 17, 2018 12:59
if you understood that is more than enough
Jun 17, 2018 12:51
as it just replicates the minor class to make it balanced
Jun 17, 2018 12:50
if you check carefully
Jun 17, 2018 12:50
falls under 1st scenario
Jun 17, 2018 12:50
it is oversampling technique
Jun 17, 2018 12:50
you know the way it works right?
Jun 17, 2018 12:50
For how class_weight works: It penalizes mistakes in samples of class[i] with class_weight[i] instead of 1. So higher class-weight means you want to put more emphasis on a class. From what you say it seems class 0 is 19 times more frequent than class 1. So you should increase the class_weight of class 1 relative to class 0, say {0:.1, 1:.9}. If the class_weight doesn't sum to 1, it will basically change the regularization parameter.

For how class_weight="auto" works, you can have a look at this discussion. In the dev version you can use class_weight="balanced", which is easier to understan
Jun 17, 2018 12:47
class_weight='balanced'
Jun 17, 2018 12:47
you are talking with respect to this Hyper parameter right?
Jun 17, 2018 12:46
I dint understand what you meant in that, why would a ml algorithm me classified into one of the sampling techniques?
Jun 17, 2018 12:46
Sure will try to do that and share it with you.
Jun 17, 2018 12:46
yeah it is absolutely fine, if you share all such results, it would be great for the next person to understand better
Jun 17, 2018 12:46
This would go in the report right?
Jun 17, 2018 12:46
yeah true, the about is clear right? Do you think anything else needs to be appended?