Here is my dataframe:

Day      Hour         Dictionary
2.0       11.0         {2: [10, 11, 12, 13]} 
5.0       14.0         {6: [4, 5, 6, 7, 8, 9, 10, 11, 12, 13]} 
1.0       16.0         {1: [12, 13, 14, 15, 16, 17]} 
2.0       13.0         {2: [8, 9, 10, 11, 12, 13, 14, 15, 16]} 
5.0       11.0         {5: [12, 12]} 

The "Day" column comprise of the keys found within the "Dictionary" column, while the "Hour" column comprises of all the values. I want to count the frequency of times each pair of Day, Hour combinations appears within the entire "Dictionary" column. For instance, taking the first row; I want to count the number of times that 2.0 is a key within the "Dictionary" column, and when 2.0 is a key, how many times is 11.0 one of the values? Trying to figure out how to do this in Python.

Desired output would be a dataframe with the Day and Hour columns the same, but a final column with the frequency of their occurrences. Desired output would look something like this:

Day      Hour         Frequency
2.0       11.0         2
5.0       14.0         8 
1.0       16.0         11 
2.0       13.0         16 
5.0       11.0         8

In which the Day & Hour columns revert to the original dataframe, and the "Frequency" column shows how many times the "Day" observation is a key, and how many times the "Hour" column is included in the values when the respective Day is a key. For instance, the above dataframe would mean that 2.0, 11.0 are a key, value pair 11 times in the original "Dictionary" column from the first dataframe.

  • 3
    Can you post a desired output? – user3483203 Jun 19 at 21:32
  • 1
    Please post reproducible data. Also the specific desired output: do you want a dataframe? table? dict? – smci Jun 19 at 21:37
  • Welcome to SO. As other said please post a mcve – user32185 Jun 19 at 21:39
  • Where are those frequencies coming from? How are those values selected? – user3483203 Jun 19 at 21:59
  • Desired output would be another dataframe with the frequency of key, value pairs. – E. Lutins Jun 19 at 22:00

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