How can I melt a pandas data frame using multiple variable names and values? I have the following data frame that changes its shape in a for loop. In one of the for loop iterations, it looks like this:

ID  Cat    Class_A   Class_B     Prob_A     Prob_B
1   Veg      1        2          0.9         0.1
2   Veg      1        2          0.8         0.2
3   Meat     1        2          0.6         0.4
4   Meat     1        2          0.3         0.7
5   Veg      1        2          0.2         0.8

I need to melt it in such a way that it looks like this:

ID  Cat    Class     Prob    
1   Veg      1       0.9       
1   Veg      2       0.1
2   Veg      1       0.8        
2   Veg      2       0.2
3   Meat     1       0.6         
3   Meat     2       0.4
4   Meat     1       0.3         
4   Meat     2       0.7
5   Veg      1       0.2         
5   Veg      2       0.8

During the for loop the data frame will contain different number of classes with their probabilities. That is why I am looking for a general approach that is applicable in all my for loop iterations. I saw this question and this but they were not helpful!

up vote 12 down vote accepted

You need lreshape by dict for specify categories:

d = {'Class':['Class_A', 'Class_B'], 'Prob':['Prob_A','Prob_B']}
df = pd.lreshape(df,d)
print (df)
    Cat  ID  Class  Prob
0   Veg   1      1   0.9
1   Veg   2      1   0.8
2  Meat   3      1   0.6
3  Meat   4      1   0.3
4   Veg   5      1   0.2
5   Veg   1      2   0.1
6   Veg   2      2   0.2
7  Meat   3      2   0.4
8  Meat   4      2   0.7
9   Veg   5      2   0.8

More dynamic solution:

Class = [col for col in df.columns if col.startswith('Class')]
Prob = [col for col in df.columns if col.startswith('Prob')]
df = pd.lreshape(df, {'Class':Class, 'Prob':Prob})
print (df)
    Cat  ID  Class  Prob
0   Veg   1      1   0.9
1   Veg   2      1   0.8
2  Meat   3      1   0.6
3  Meat   4      1   0.3
4   Veg   5      1   0.2
5   Veg   1      2   0.1
6   Veg   2      2   0.2
7  Meat   3      2   0.4
8  Meat   4      2   0.7
9   Veg   5      2   0.8

EDIT:

lreshape is now undocumented, but is possible in future will by removed (with pd.wide_to_long too).

Possible solution is merging all 3 functions to one - maybe melt, but now it is not implementated. Maybe in some new version of pandas. Then my answer will be updated.

  • @jezrael: what about if I need to have under Class the names of the classes (''Class_A', 'Class_B') rather than thier codes ('1', '2')? –  owise Aug 13 '17 at 17:28
  • I think the simpliest is df['Class_A'] = 'Class_A' and df['Class_B'] = 'Class_B' - replace values by columns with scalar and then use lreshape – jezrael Aug 13 '17 at 17:47
  • @jezrael I don't think undocumented functions are good to use, seeing that you had to link directly to the source code. There has been talk of removing lreshape – Ted Petrou Aug 18 '17 at 18:08
  • @Ted Petrou - Thank you for comment. Yes, is possible sometimes in future function can be removed or not, both function are used rarely. But I think it is not reason for downvote :( – jezrael Aug 18 '17 at 19:21
  • I think this answer is really bad which is why I downvoted it. You still have 10 upvotes. In my opinion, you should almost never use undocumented features, especially ones that have an equivalent and superior counterpart like pd.wide_to_long. Now people are going to come to this question and think this is a proper way to melt two columns at the same time. There is no way anyone should use this in production. – Ted Petrou Aug 18 '17 at 19:32

Or you can try this by using str.contain and pd.concat

DF1=df2.loc[:,df2.columns.str.contains('_A|Cat|ID')]
name=['ID','Cat','Class','Prob']
DF1.columns=name
DF2=df2.loc[:,df2.columns.str.contains('_B|Cat|ID')]
DF2.columns=name
pd.concat([DF1,DF2],axis=0)

Out[354]: 
   ID   Cat  Class  Prob
0   1   Veg      1   0.9
1   2   Veg      1   0.8
2   3  Meat      1   0.6
3   4  Meat      1   0.3
4   5   Veg      1   0.2
0   1   Veg      2   0.1
1   2   Veg      2   0.2
2   3  Meat      2   0.4
3   4  Meat      2   0.7
4   5   Veg      2   0.8

The top voted answer uses the undocumented lreshape which may at some point get deprecated because of its similarity to pd.wide_to_long which is documented and can use directly here. By default suffix matches only to numbers. You must change this to match characters (here I just used any character).

pd.wide_to_long(df, stubnames=['Class', 'Prob'], i=['ID', 'Cat'], j='DROPME', suffix='.')\
  .reset_index()\
  .drop('DROPME', axis=1)

   ID   Cat  Class  Prob
0   1   Veg      1   0.9
1   1   Veg      2   0.1
2   2   Veg      1   0.8
3   2   Veg      2   0.2
4   3  Meat      1   0.6
5   3  Meat      2   0.4
6   4  Meat      1   0.3
7   4  Meat      2   0.7
8   5   Veg      1   0.2
9   5   Veg      2   0.8

You could also use pd.melt.

# Make DataFrame
df = pd.DataFrame({'ID' :  [i for i in range(1,6)],
                   'Cat' : ['Veg']*2 + ['Meat']*2 + ['Veg'],
                   'Class_A' : [1]*5,
                   'Class_B' : [2]*5,
                   'Prob_A' : [0.9, 0.8, 0.6, 0.3, 0.2],
                   'Prob_B' : [0.1, 0.2, 0.4, 0.7, 0.8]})

# Make class dataframe and prob dataframe
df_class = df.loc[:, ['ID', 'Cat', 'Class_A', 'Class_B']]
df_prob = df.loc[:, ['ID', 'Cat', 'Prob_A', 'Prob_B']]

# Melt class dataframe and prob dataframe
df_class = df_class.melt(id_vars = ['ID',
                                    'Cat'],
                         value_vars = ['Class_A',
                                       'Class_B'],
                         value_name = 'Class')
df_prob = df_prob.melt(id_vars = ['ID',
                                  'Cat'],
                       value_vars = ['Prob_A',
                                     'Prob_B'],
                       value_name = 'Prob')

# Clean variable column so only 'A','B' is left in both dataframes
df_class.loc[:, 'variable'] = df_class.loc[:, 'variable'].str.partition('_')[2]
df_prob.loc[:, 'variable'] = df_prob.loc[:, 'variable'].str.partition('_')[2]

# Merge class dataframe with prob dataframe on 'ID', 'Cat', and 'variable';
# drop 'variable'; sort values by 'ID', 'Cat'
final = df_class.merge(df_prob,
                       how = 'inner',
                       on = ['ID',
                             'Cat',
                             'variable']).drop('variable', axis = 1).sort_values(by = ['ID',
                                                                                       'Cat'])

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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