39

i have this dataframe:

0 name data
1 alex asd
2 helen sdd
3 alex dss
4 helen sdsd
5 john sdadd

so i am trying to get the most frequent value or values(in this case its values) so what i do is:

dataframe['name'].value_counts().idxmax()

but it returns only the value: Alex even if it Helen appears two times as well.

13 Answers 13

57
0

By using mode

df.name.mode()
Out[712]: 
0     alex
1    helen
dtype: object
| improve this answer | |
  • Hmmm, I have seen you using mode earlier :) – Vaishali Feb 2 '18 at 21:05
  • 1
    @Vaishali yep, that is from scipy.mode , which will return the mode and the count , for pd.mode, it one return the value :-) – YOBEN_S Feb 2 '18 at 21:12
18
0

To get the n most frequent values, just subset .value_counts() and grab the index:

# get top 10 most frequent names
n = 10
dataframe['name'].value_counts()[:n].index.tolist()
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  • 1
    What exactly does adding .index does? Why can't I leave it till [:n]? – user1953366 Apr 28 '19 at 7:10
  • The returned data structure will have the name values stored in the index, with their respective counts stored as the value. So if you didn't use index, you'd get a list of the most frequent counts, not the associated name. – Jared Wilber Apr 28 '19 at 18:15
  • Great this works. But need to find the top n for all the columns in one go. and store them in n columns. So dataframe will have {colmn_name, mode_1, mode_2...mode_n} – Vikrant Dec 2 '19 at 9:42
10
0

You could try argmax like this:

dataframe['name'].value_counts().argmax() Out[13]: 'alex'

The value_counts will return a count object of pandas.core.series.Series and argmax could be used to achieve the key of max values.

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  • 2
    argmax is deprecated for idmax – Bhoomtawath Plinsut Nov 10 '18 at 13:46
  • 1
    Just a small typo correction: is not idmax, but idxmax – ralvarez Jul 5 '19 at 8:08
5
1

You can use this to get a perfect count, it calculates the mode a particular column

df['name'].value_counts()
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5
0
df['name'].value_counts()[:5].sort_values(ascending=False)

The value_counts will return a count object of pandas.core.series.Series and sort_values(ascending=False) will get you the highest values first.

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  • While this code may answer the question, providing additional context regarding why and/or how this code answers the question improves its long-term value. – xiawi Sep 11 '19 at 8:57
4
0

Not Obvious, But Fast

f, u = pd.factorize(df.name.values)
counts = np.bincount(f)
u[counts == counts.max()]

array(['alex', 'helen'], dtype=object)
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  • For numeric data, this was slightly slower for me :) Like 5% – The Unfun Cat Nov 14 '19 at 10:39
3
0

Here's one way:

df['name'].value_counts()[df['name'].value_counts() == df['name'].value_counts().max()]

which prints:

helen    2
alex     2
Name: name, dtype: int64
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2
0

You could use .apply and pd.value_counts to get a count the occurrence of all the names in the name column.

dataframe['name'].apply(pd.value_counts)
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2
0

to get top 5:

dataframe['name'].value_counts()[0:5]
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  • 2
    I actually like this answer, but there is one issue. Doing this just returns the frequency, not the label. Fix this by using dataframe['name'].value_counts().keys()[0:5] instead. – user9872300 Jul 25 '19 at 17:32
2
0

my best solution to get the first is

 df['my_column'].value_counts().sort_values(ascending=False).argmax()
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1
0

To get the top five most common names:

dataframe['name'].value_counts().head()
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1
0

Simply use this..

dataframe['name'].value_counts().nlargest(n)

The functions for frequencies largest and smallest are:

  • nlargest() for mostfrequent 'n' values
  • nsmallest() for least frequent 'n' values
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1
0

Use:

df['name'].mode()

or

df['name'].value_counts().idxmax()
| improve this answer | |
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