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  • How can I run a loop in Pandas that returns a list that contains missing values as zeros?

The loop should take the values in the full_scores_list, check whether that value is in the Home_team_scores column. If so calculate and output the frequency, otherwise return zero.

I have a long list that has different scores for a team for two league seasons.

       My code is:
       all_scores = []
       for score in range(0,len(full_scores_list)):
           if full_scores_list[score] == '0 0':
                    all_scores.append(data1.Home_team_scores.value_counts()['0 0'])
           elif full_scores_list[score] == '0 1':
                   all_scores.append(data1.Home_team_scores.value_counts()['0     1'])
           elif full_scores_list[score] == '0 2':
                all_scores.append(data1.Home_team_scores.value_counts()['0 2']) 
               all_scores.append(data1.Home_team_scores.value_counts()['0 2'])
           elif full_scores_list[score] == '0 3':
               all_scores.append(data1.Home_team_scores.value_counts()['0 3'])
           elif full_scores_list[score] == '0 4':
               all_scores.append(data1.Home_team_scores.value_counts()['0 4'])
           elif full_scores_list[score] == '0 5':
               all_scores.append(data1.Home_team_scores.value_counts()['0 5'])  
           if full_scores_list[score] == '1 0':
                all_scores.append(data1.Home_team_scores.value_counts()['1 0'])
           elif full_scores_list[score] == '1 1':
               all_scores.append(data1.Home_team_scores.value_counts()['1 1'])
           elif full_scores_list[score] == '1 2':
               all_scores.append(data1.Home_team_scores.value_counts()['1 2'])
           elif full_scores_list[score] == '1 3':
               all_scores.append(data1.Home_team_scores.value_counts()['1 3'])
           elif full_scores_list[score] == '1 4':
               all_scores.append(data1.Home_team_scores.value_counts()['1 4'])
           elif full_scores_list[score] == '1 5':
               all_scores.append(data1.Home_team_scores.value_counts()['1 5'])


       all_scores
  • Below is my code which does not work: – Harrod Domer Jun 13 '18 at 7:17
  • The following is my code, which does not work: – Harrod Domer Jun 13 '18 at 7:18
  • At least you tried – koPytok Jun 13 '18 at 7:24
  • I want to extract and append in a list all scores for a team from '0 0', '0 1'... all the way to '5 5'. Where a score is missing, I want the code to return 0. How can I do this? I am getting the following error: – Harrod Domer Jun 13 '18 at 7:29
  • 2
    Don't put additional information in comments. Instead, edit your question. – Metropolis Jun 15 '18 at 20:27
-1

How about something along the lines:

com_vals = df['Home_team_scores'].unique()
df['full_scores_list'].apply(lambda v: v in com_vals)

Improved according to comments:

Instead of the lambda-function, you can use a helper function for the apply():

com_vals = df['Home_team_scores'].unique()
def helper():
  return v in com_vals
df['full_scores_list'].apply(helper)

You can have more fine-grained control on the outputs and conditions with the helper() function.

  • Thanks. I have used the solution you have suggested, but I am still getting an error: – Harrod Domer Jun 13 '18 at 7:37
  • com_vals = data1['Home_team_scores'].unique() data1['full_scores_list'].apply(lamda v: v in com_vals) – Harrod Domer Jun 13 '18 at 7:37
  • File "<ipython-input-45-6c512429cd24>", line 2 data1['full_scores_list'].apply(lamda v: v in com_vals) ^ SyntaxError: invalid syntax My df id data1 – Harrod Domer Jun 13 '18 at 7:38
  • I want the final array to include all possible scores, returning zero if that score is not in home team scores, otherwise return the sum of the score. How can I go about it? Im my list there are 36 possible scores – Harrod Domer Jun 13 '18 at 7:40
  • I have tried this, but I get the error: Key error: 'full_scores_list' full_scores_list = ['0 0', '0 1', '0 2', '0 3', '0 4', '0 5', '1 0', '1 1', '1 2', '1 3', '1 4', '1 5', '2 0', '2 1', '2 2', '2 3', '2 4', '2 5', '3 0', '3 1', '3 2', '3 3', '3 4', '3 5', '4 0', '4 1', '4 2', '4 3', '4 4', '4 5', '5 0', '5 1', '5 2', '5 3', '5 4', '5 5'] com_vals = data1['Home_team_scores'].unique() data1['full_scores_list'].apply(lambda v: v in com_vals) – Harrod Domer Jun 13 '18 at 7:54

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