Nis*_*ant 2 python dictionary dataframe pandas
我有一个数据框:
df = pd.DataFrame(
{'title':['a1','a2','a3','a4','a5'],
'genre_name':[
['family', 'animation'],
['action', 'family', 'comedy'],
['family', 'comedy'],
['horror','action'],
['family', 'animation','comedy']]}
)
df
title genre_name
0 a1 ['family', 'animation']
1 a2 ['action', 'family', 'comedy']
2 a3 ['family', 'comedy']
3 a4 ['horror','action]
4 a5 ['family', 'animation','comedy']
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我有字典:
dict={'1':'family','2':'animation','3':'action','4':'comedy','5':'horror'}
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我想创建一个名为“genre_ids”的新列,它将所有的流派名称映射到字典“dict”中的键。
所需的 df 是:
df
title genre_name genre_ids
0 a1 ['family', 'animation'] [1,2]
1 a2 ['action', 'family', 'comedy'] [3,1,4]
2 a3 ['family', 'comedy'] [1,4]
3 a4 ['horror','action] [5,3]
4 a5 ['family', 'animation','comedy'] [1,2,4]
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我怎样才能做到这一点?
将字典名称从dict其他变量更改为其他变量,因为内置函数(python 代码字),然后在列表理解中将键与值和映射值交换:
d={'1':'family','2':'animation','3':'action','4':'comedy','5':'horror'}
d1 = {v:k for k, v in d.items()}
df['genre_ids'] = df['genre_name'].apply(lambda x: [d1.get(y) for y in x])
#alternative
#df['genre_ids'] = [[d1.get(y) for y in x] for x in df['genre_name']]
print (df)
title genre_name genre_ids
0 a1 [family, animation] [1, 2]
1 a2 [action, family, comedy] [3, 1, 4]
2 a3 [family, comedy] [1, 4]
3 a4 [horror, action] [5, 3]
4 a5 [family, animation, comedy] [1, 2, 4]
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编辑:您还可以指定如果不匹配会发生什么,这里添加crime了第一个列表:
df = pd.DataFrame({'title':['a1','a2','a3','a4','a5'],
'genre_name':[['crime', 'animation'],['action', 'family', 'comedy'],
['family', 'comedy'],['horror','action'],
['family', 'animation','comedy']]})
d={'1':'family','2':'animation','3':'action','4':'comedy','5':'horror'}
d1 = {v:k for k, v in d.items()}
#no matched values repalced to None
df['genre_ids0'] = df['genre_name'].apply(lambda x: [d1.get(y) for y in x])
#no match replaced to default value
df['genre_ids1'] = df['genre_name'].apply(lambda x: [d1.get(y, 0) for y in x])
#no match is removed
df['genre_ids2'] = df['genre_name'].apply(lambda x: [d1[y] for y in x if y in d1])
print (df)
title genre_name genre_ids0 genre_ids1 genre_ids2
0 a1 [crime, animation] [None, 2] [0, 2] [2]
1 a2 [action, family, comedy] [3, 1, 4] [3, 1, 4] [3, 1, 4]
2 a3 [family, comedy] [1, 4] [1, 4] [1, 4]
3 a4 [horror, action] [5, 3] [5, 3] [5, 3]
4 a5 [family, animation, comedy] [1, 2, 4] [1, 2, 4] [1, 2, 4]
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