2

I have a dataset that looks like the below:

+-------------------------+-------------+------+--------+-------------+--------+--+
|                         | impressions | name | shares | video_views |  diff  |  |
+-------------------------+-------------+------+--------+-------------+--------+--+
| _ts                     |             |      |        |             |        |  |
| 2016-09-12 23:15:04.120 |           1 | Vidz |      7 |       10318 | 15mins |  |
| 2016-09-12 23:16:45.869 |           2 | Vidz |      7 |       10318 | 16mins |  |
| 2016-09-12 23:30:03.129 |           3 | Vidz |     18 |       29291 | 30mins |  |
| 2016-09-12 23:32:08.317 |           4 | Vidz |     18 |       29291 | 32mins |  |
+-------------------------+-------------+------+--------+-------------+--------+--+

I am trying to build a dataframe to feed to a regression model, and I'd like to parse out specific rows as features. To do this I would like the dataframe to resemble this

+-------------------------+------+--------------+-------------------+-------------------+--------------+-------------------+-------------------+
|                         | name | 15min_shares | 15min_impressions | 15min_video_views | 30min_shares | 30min_impressions | 30min_video_views |
+-------------------------+------+--------------+-------------------+-------------------+--------------+-------------------+-------------------+
| _ts                     |      |              |                   |                   |              |                   |                   |
| 2016-09-12 23:15:04.120 | Vidz |            7 |                 1 |             10318 |           18 |                 3 |             29291 |
+-------------------------+------+--------------+-------------------+-------------------+--------------+-------------------+-------------------+

What would be the best way to do this? I think this would be easier if I were only trying to select 1 row (15mins), just parse out the unneeded rows and pivot.

However, I need 15min and 30min features and am unsure on how to proceed of the need for these columns

2
  • Do you now about pandas.DataFrame.get_dummies(), it is not exactly what you asked for, but might be a workaround.
    – quapka
    Sep 16, 2016 at 17:30
  • The output you want doesn't make sense. Your _ts row with 2016-09-12 23:15:04.120 does not have any 30 min impressions.
    – A.Kot
    Sep 16, 2016 at 17:37

2 Answers 2

2

You could take subsets of your DF to include rows for 15mins and 30mins and concatenate them by backfilling NaN values of first row(15mins) with that of it's next row(30mins) and dropping off the next row(30mins) as shown:

prefix_15="15mins"
prefix_30="30mins"

fifteen_mins = (df['diff']==prefix_15)
thirty_mins = (df['diff']==prefix_30)

df = df[fifteen_mins|thirty_mins].drop(['diff'], axis=1)

df_ = pd.concat([df[fifteen_mins].add_prefix(prefix_15+'_'),          \
                 df[thirty_mins].add_prefix(prefix_30+'_')], axis=1)   \
                .fillna(method='bfill').dropna(how='any')

del(df_['30mins_name'])
df_.rename(columns={'15mins_name':'name'}, inplace=True)
df_

Image

0

stacking to pivot and collapsing your columns

df1 = df.set_index('diff', append=True).stack().unstack(0).T
df1.columns = df1.columns.map('_'.join)

To see just the first row

df1.iloc[[0]].dropna(1)

enter image description here

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.