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17:06
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Q: task calculate percentages for multiple columns

Georg HeilerWhen I have a data frame in pandas like: raw_data = { 'subject_id': ['1', '2', '3', '4', '5'], 'name': ['A', 'B', 'C', 'D', 'E'], 'nationality': ['DE', 'AUT', 'US', 'US', 'US'], 'alotdifferent': ['x', 'y', 'z', 'x', 'a'], 'target': [0,0,0,1,1], 'ag...

Maybe a single pass is possible similar to the demo here: jcrist.github.io/dask-sklearn-part-3.html
"The percentages of the target column per any other column..." Your calculation here derives an unusual kind of proportion. For example, the name:A/target:0 combo occurs in 1 of 5 observations. But you're dividing 1 occurrence by the sum of 1 values in target. Imagine if you had 3 entries of name:A/target:0, but still only two 1 values in target. Should the name:A/target:0 proportion be 1.5, or 150%?
You might be right, and I need to think about this, but the main point is I want to parallelize / efficiently implement such a division (sort of percentage). And actually, target:0 is irrelevant. I am only interested in target:1, or pointed out differently: the proportion of target:1/allRecords per each group per each column. Maybe this is a better formulation.
In that case, please consider updating the main text of your question with your exact use case. The computation procedure itself may be important in addressing your question about efficiency, as Pandas has built-in optimizations for certain operations and sequences of operations.
To be clear, if name:A occurs 3 times in a dataset with 5 total observations, and name:A/target:1 occurs 1 time, then the desired proportion calculation for the name:A/target:1 grouping should be 0.33?
Actually, I calculate 2 percentages/ divisions: one, exactly as you mentioned, and another one as outlined above. Please find an example which is a bit more involved at the following link: github.com/geoHeil/pythonQuestions/blob/master/…
17:07
Hi Georg, I'm happy to help answer your question, but there are a few more clarification points I have. Do you have a moment to answer them? The comments section was getting a bit crowded.
In particular, I'm not sure the merge procedure you specified will produce the desired results, when there are multiple outcomes from a groupby() for a given column
For example, consider this augmented version of the example data you provided:
raw_data = {
    'subject_id': ['1', '2', '3', '4', '5', '6','7'],
    'name': ['A', 'B', 'C', 'D', 'E', 'A','A'],
    'nationality': ['DE', 'AUT', 'US', 'US', 'US', 'DE','DE'],
    'alotdifferent': ['x', 'y', 'z', 'x', 'a','x','z'],
    'target': [0,0,0,1,1,0,1],
    'age_group' : [1, 2, 1, 3, 1, 2,1]}
We can compute the proportion for a single column, name, like this:
def get_prop(group):
return group.sum() / float(group.count())

df_a.groupby('name', as_index=False).agg({'target':get_prop})
  name    target
0    A  0.333333
1    B  0.000000
2    C  0.000000
3    D  1.000000
4    E  1.000000
But mergedThing has a strange outcome now:
(to compute mergedThing I used your code, not the new version of the proportion calculation I provided above)
Basically, it will be challenging to merge the groupby proportions to the original data frame, if there are many values within each group, from the groupby column.
I'll be on and offline today, so just leave a note if you like and I'll get back to when I can. Thanks!
17:42
@andrew_ree: you are right,
there was a bug in the sample code. Below fixes the problem.

`
original = df_a
grouped = original.groupby([colname, target]).size()
df = grouped / original[target].sum()
nameCol = "pre_" + colname
grouped = df.reset_index(name=nameCol)
groupedOnly = grouped[grouped[target] == 1]
groupedOnly = groupedOnly.drop(target, 1)

result = groupedOnly

mergedThing = pd.merge(df_a, result, on=colname, how='left')
mergedThing.loc[(mergedThing[nameCol].isnull()), nameCol] = 0
mergedThing`
This is only for 1 of the two quotients though.
17:57
Thanks a lot for your support.
18:45
Ok, so for all cases of a grouped value (say, for example, the group of A values in the name column), you want the proportion of target=1 within that group to be assigned as the pre_name value for every name=A in the original df, is that right?
Re: second quotient, the description in your post is insufficient for me to understand exactly what you want. I looked at the link you provided, but it's a lot of code and very little explanation - if you want help with the second quotient, you might consider opening up a second question, or providing more explanation about it in your original post here.
Can we assume that values in target are only 0 or 1?
19:11
Yes target is either 0 or 1. I will update the code to actually calculate both values.
Here:
original = df_a
grouped = original.groupby([colname, target]).size()
df = grouped / original[target].sum()
nameCol = "pre_" + colname
grouped = df.reset_index(name=nameCol)
groupedOnly = grouped[grouped[target] == 1]
groupedOnly = groupedOnly.drop(target, 1)
result = groupedOnly

mergedThing = pd.merge(df_a, result, on=colname, how='left')
mergedThing.loc[(mergedThing[nameCol].isnull()), nameCol] = 0
print(mergedThing)

original = mergedThing
grouped = original.groupby([colname, target]).size()
a snippet which will calculate both columns (this is a fairly naive implementation as there are 2 passes through the data for each column. :(
20:13
But your solution is not really quicker than what I already have:
def manual_quotients(df):
for colname in columnsToBias_keep.union(columnsToDrop):
original = df.copy()
grouped = original.groupby([colname, target]).size()
df = grouped / original[target].sum()
nameCol = "pre_" + colname
grouped = df.reset_index(name=nameCol)
groupedOnly = grouped[grouped[target] == 1]
groupedOnly = groupedOnly.drop(target, 1)
result = groupedOnly
mergedThing = pd.merge(df_a, result, on=colname, how='left')
mergedThing.loc[(mergedThing[nameCol].isnull()), nameCol] = 0
df= mergedThing
which results in 100 loops, best of 3: 15.5 ms per loop for your suggested sample data / is even a bit quicker than yours.
And this is painfully slow on the real / big dataset. Do you see any possibility to further speed things up / require less passes over the data?
20:45
Actually, maybe the best thing is to try to use dark.delayed on the for col in columns loop.
But then it is unclear to me how I can merge the data back together as the columns are processed in parallel.
 
3 hours later…
23:57
You've added several conditions to your original post, including edge cases, additional quotients, and now a requirement related to an sklearn transformer. The code example you sent me in chat is not self-sufficient (e.g. where is columnsToBias_keep?), and I'm having trouble reproducing either the function output or the speed you're seeing.
I'm happy to help, if I can, but your question and requirements need to be better clarified in order for me to be able to contribute efficiently. Please consider narrowing down the scope of your original post, and update it to include your full set of requirements.

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