0

I have dataframe of time series and I want to take the % change between a value 3days prior and 1day prior to the current date. I have shown an example below

the dataframe is shown before

import pandas as pd
df = pd.DataFrame({'Date' : ['2014-03-27', '2014-03-28', '2014-03-31', '2014-04-01', '2014-04-02', '2014-04-03', '2014-04-04', '2014-04-07','2014-04-08', '2014-04-09'],
                   'income': [1849.04, 1857.62, 1872.34, 1885.52, 1890.9, 1888.77, 1865.09, 1845.04, 1851.96, 1872.18],

})

the expected answer, in this case, is as shown below in the table

value for 27/3/2014 is 0.015019 = 1885.52/1857.62-1 for 28/3/2020 is 0.009913 = 1890.9/1872.34-1

and so on. How do I get that?

enter image description here

3

Simple. Use .shift

df['%Change'] = df.income.shift(-3)/df.income.shift(-1)-1

enter image description here

| improve this answer | |
  • perfect! thanks again mate – user13412850 Oct 18 at 13:38

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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