15

How could I title all words except the ones in the list, keep?

keep = ['for', 'any', 'a', 'vs']
df.col
 ``         
0    1. The start for one
1    2. Today's world any
2    3. Today's world vs. yesterday.

Expected Output:

     number   title
0     1       The Start for One
1     2       Today's World any
2     3       Today's World vs. Yesterday.


I tried

df['col'] = df.col.str.title().mask(~clean['col'].isin(keep))
0
14

Here is one way of doing with str.replace and passing the replacement function:

def replace(match):
    word = match.group(1)
    if word not in keep:
        return word.title()
    return word

df['title'] = df['title'].str.replace(r'(\w+)', replace)

   number                         title
0       1             The Start for One
1       2             Today'S World any
2       3  Today'S World vs. Yesterday.
3
  • 1
    Thanks. Would you mind explaining how .group(1) works? I couldn't find any documentation on it – asd Feb 25 at 12:12
  • 1
    @asd Sure. .group(1) here is referring to first capturing group in the matching object match although you can instead directly use .group() here because there is only one capturing group in the regex pattern which is (\w+). If you want to check the documentation here is the link to the docs. – Shubham Sharma Feb 25 at 12:23
  • Many thanks. Given the default for str.replace is changing in a future version pandas, how could I amend the code using replace? I tried: df['title'] = df['title'].replace(r'(\w+)', replace,regex="True") – asd Mar 11 at 21:26
5

First we create your number and title column. Then we use Series.explode to get a word per row. If the word is in keep we ignore it, else apply Series.str.title:

keep = ['for', 'any', 'a', 'vs']

# create 'number' and 'title' column
df[['number', 'title']] = df['col'].str.split(".", expand=True, n=1)
df = df.drop(columns='col')

# apply str.title if not in keep
words = df['title'].str.split().explode()
words = words.str.replace(".", "", regex=False)
words = words.mask(words.isin(keep)).str.title().fillna(words)
df['title'] = words.groupby(level=0).agg(" ".join)

Output

  number                         title
0      1             The Start for One
1      2             Today'S World any
2      3  Today'S World vs. Yesterday.
3

You can create a function to accept a string and check against an iterable to decide whether to capitalize or not.

The function below does just that.

def keep_cap(string, it):
    '''
    Returns a generator by tokenizing a string and checking each word before capitalizing
    '''
    string_tokens = string.split()
    for i in string_tokens:
        if i in it:
            yield i
        else:
            yield i.capitalize()

With the function, you can apply it on any string such as:

' '.join(keep_cap('cap for cap any cap vs', keep))
>> 'Cap for Cap any Cap vs'

From that you can directly apply the function to the column and joining the generator shown below;

df = pd.DataFrame(["The start for one",
                   "Today's world any",
                   "Today's world vs. yesterday."], columns = ['sent'])

keep = ['for', 'any', 'a', 'vs']

df['sent'] = df['sent'].apply(lambda x: ' '.join(keep_cap(x,keep)) )

Output:

    sent
0   The Start for One
1   Today's World any
2   Today's World Vs. Yesterday.
2

This is a one line solution:

keep = ['for', 'any', 'a', 'vs']
        
df['col'] = df.col.str.split(" ").apply(lambda x: ' '.join([y.capitalize() if not (y in (keep)) else y for y in x]))

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