Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have the following dataframe df:

[Out]:

                     VOL
2011-04-01 09:30:00  11297
2011-04-01 09:30:10  6526
2011-04-01 09:30:20  14021
2011-04-01 09:30:30  19472
2011-04-01 09:30:40  7602
...
2011-04-29 15:59:30  79855
2011-04-29 15:59:40  83050
2011-04-29 15:59:50  602014

This df consist of volume observations at every 10 second for 22 non-consecutive days. I want to DE-seasonalized my time-series by dividing each observations by the average volume of their respective 5 minute time interval. To do so, I need to take the time-series average of volume at every 5 minutes across the 22 days. So I would end up with a time-series of averages at every 5 minutes 9:30:00 - 9:35:00; 9:35:00 - 9:40:00; 9:40:00 - 9:45:00 ... until 16:00:00. The average for the interval 9:30:00 - 9:35:00 is the average of volume for this time interval across all 22 days (i.e. So the average between 9:30:00 to 9:35:00 is the total volume between 9:30:00 to 9:35:00 on (day 1 + day 2 + day 3 ... day 22) / 22 . Does it makes sense?). I would then divide each observations in df that are between 9:30:00 - 9:35:00 by the average of this time interval.

Is there a package in Python / Pandas that can do this?

share|improve this question

1 Answer 1

up vote 3 down vote accepted

Edited answer:

date_times = pd.date_range(datetime.datetime(2011, 4, 1, 9, 30),
                           datetime.datetime(2011, 4, 16, 0, 0),
                           freq='10s')
VOL = np.random.sample(date_times.size) * 10000.0

df = pd.DataFrame(data={'VOL': VOL,'time':date_times}, index=date_times)
df['h'] = df.index.hour
df['m'] = df.index.minute
df1 = df.resample('5Min', how={'VOL': np.mean})
times = pd.to_datetime(df1.index)
df2 = df1.groupby([times.hour,times.minute]).VOL.mean().reset_index()
df2.columns = ['h','m','VOL']
df.merge(df2,on=['h','m'])
df_norm = df.merge(df2,on=['h','m'])
df_norm['norm'] = df_norm['VOL_x']/df_norm['VOL_y']

** Older answer (keeping it temporarily)

Use resample function

df.resample('5Min', how={'VOL': np.mean})

eg:

date_times = pd.date_range(datetime.datetime(2011, 4, 1, 9, 30),
                           datetime.datetime(2011, 4, 16, 0, 0),
                           freq='10s')
VOL = np.random.sample(date_times.size) * 10000.0

df = pd.DataFrame(data={'VOL': VOL}, index=date_times)
df.resample('5Min', how={'VOL': np.mean})
share|improve this answer
    
No that would be just the consecutive average at every 5 minutes over the entire sample. I need the average for each 5 minutes interval across the time-series. So the average between 9:30:00 to 9:35:00 is the total volume between 9:30:00 to 9:35:00 on (day 1 + day 2 + day 3 ... day 22) / 22 . Does it makes sense? Thanks for your attempt –  Plug4 Jun 29 '14 at 14:17
    
Does the updated answer solve it? –  John Galt Jun 29 '14 at 14:47
    
That looks good! thanks! –  Plug4 Jun 29 '14 at 15:15
    
I think there's something wrong... there should be the same amount of rows in df_norm as in df –  Plug4 Jun 29 '14 at 18:43
    
I think what is missing is that for df['h'] = df.index.hour and df['m'] = df.index.minute we need the hour and minute at the closest 5th minute interval –  Plug4 Jun 29 '14 at 19:09

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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