3

I have two lists which contain terms in strings format. Those terms belong to two categories: fruits and vehicles. I am trying to display a dataframe only containing pairs of terms from conflicting categories. What would be the best approach to do that? Below is an example of my list and a dataframe. Any help would be greatly appreciated!

  dataframe:

         col 1                 
  ['apple', 'truck' ]
  ['truck', 'orange']
  ['pear',  'motorcycle']
  ['pear', 'orange' ]
  ['apple', 'pear'  ]
  ['truck', 'car'   ]


  vehicles = ['car', 'truck', 'motorcycle']
  fruits = ['apple', 'orange', 'pear']


  desired output:

        col 2

  ['apple', 'truck' ]
  ['pear', 'motorcycle']
  ['truck', 'orange']
5

Create DataFrame from lists column, test membership by DataFrame.isin, then invert masks by ~, check at least one True per row with DataFrame.any for both lists and last chain conditions by bitwise AND - & with filtering by boolean indexing:

df1 = pd.DataFrame(df['col 1'].values.tolist())
df = df[(~df1.isin(vehicles)).any(axis=1) & (~df1.isin(fruits)).any(axis=1)]
print (df)
                col 1
0      [apple, truck]
1     [truck, orange]
2  [pear, motorcycle]

Another solution with intersection of sets chained by and (because scalars) and cast to bool - empty sets are converted to False:

def func(x):
    s = set(x)
    v = set(vehicles)
    f = set(fruits)
    return bool((s & v) and (s & f))

df = df[df['col 1'].apply(func)]
print (df)
                col 1
0      [apple, truck]
1     [truck, orange]
2  [pear, motorcycle]
0

May be np.isin could be useful for you!

super_set = np.array([vehicles,fruits])

def f(x):
    return all(np.isin(super_set,x).sum(axis=1))

df[df.col1.apply(f)]

#
col1
0   [apple, truck]
1   [truck, orange]
2   [pear, motorcycle]

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.