I have a pandas dataframe with few columns.

Now I know that certain rows are outliers based on a certain column value.

For instance columns - 'Vol' has all values around 12.xx and one value which is 4000

Now I would like to exclude those rows that have Vol Column like this.

So essentially I need to put a filter such that we select all rows wehre the values of a certain column are within say 3 standard deviations from mean.

Whats an elegant way to achieve this.

  • 1
    What if I need to do the same on a Series instead of a dataframe? – AMM Apr 21 '14 at 19:25

12 Answers 12

Use boolean indexing as you would do in numpy.array

df = pd.DataFrame({'Data':np.random.normal(size=200)})
# example dataset of normally distributed data. 

df[np.abs(df.Data-df.Data.mean()) <= (3*df.Data.std())]
# keep only the ones that are within +3 to -3 standard deviations in the column 'Data'.

df[~(np.abs(df.Data-df.Data.mean()) > (3*df.Data.std()))]
# or if you prefer the other way around

For a series it is similar:

S = pd.Series(np.random.normal(size=200))
S[~((S-S.mean()).abs() > 3*S.std())]
  • 3
    their is a DataFrame.abs() FYI, also DataFrame.clip() – Jeff Apr 21 '14 at 16:41
  • 4
    In the case of clip(), Jeff, the outlines are not removed: df.SOME_DATA.clip(-3std,+3std) assign the outliners to either +3std or -3std – CT Zhu Apr 21 '14 at 16:57
  • oh I agree; just pointing it out. – Jeff Apr 21 '14 at 16:58
  • What if i need hte same on a pd.Series? – AMM Apr 21 '14 at 19:24
  • 1
    How can we do the same thing if our pandas data frame has 100 columns? – DreamerP Mar 27 at 10:06

If you have multiple columns in your dataframe and would like to remove all rows that have outliers in at least one column, the following expression would do that in one shot.

df = pd.DataFrame(np.random.randn(100, 3))

from scipy import stats
df[(np.abs(stats.zscore(df)) < 3).all(axis=1)]
  • 4
    Can you explain what this code is doing? And perhaps provide an idea how I might remove all rows that have an outlier in a single specified column? Would be helpful. Thanks. – samthebrand Aug 26 '15 at 18:51
  • 10
    For each column, first it computes the Z-score of each value in the column, relative to the column mean and standard deviation. Then is takes the absolute of Z-score because the direction does not matter, only if it is below the threshold. .all(axis=1) ensures that for each row, all column satisfy the constraint. Finally, result of this condition is used to index the dataframe. – rafaelvalle Jul 22 '16 at 19:43
  • Still the most elegant solution here. – u-phoria Jul 9 at 19:57
  • 1
    How would you handle the situation when there are Nulls/Nans in the columns. How can we have them ignored ? – asimo Aug 16 at 3:38

For each of your dataframe column, you could get quantile with:

q = df["col"].quantile(0.99)

and then filter with:

df[df["col"] < q]

This answer is similar to that provided by @tanemaki, but uses a lambda expression instead of scipy stats.

df = pd.DataFrame(np.random.randn(100, 3), columns=list('ABC'))

df[df.apply(lambda x: np.abs(x - x.mean()) / x.std() < 3).all(axis=1)]

To filter the DataFrame where only ONE column (e.g. 'B') is within three standard deviations:

df[((df.B - df.B.mean()) / df.B.std()).abs() < 3]
# accept a dataframe, remove outliers, return cleaned data in a new dataframe
# see http://www.itl.nist.gov/div898/handbook/prc/section1/prc16.htm
def remove_outlier(df_in, col_name):
    q1 = df_in[col_name].quantile(0.25)
    q3 = df_in[col_name].quantile(0.75)
    iqr = q3-q1 #Interquartile range
    fence_low  = q1-1.5*iqr
    fence_high = q3+1.5*iqr
    df_out = df_in.loc[(df_in[col_name] > fence_low) & (df_in[col_name] < fence_high)]
    return df_out
  • I am getting error "ValueError: Cannot index with multidimensional key" in line " df_out = df_in.loc[(df_in[col_name] > fence_low) & (df_in[col_name] < fence_high)] " Will you help – Imran Ahmad Ghazali May 2 at 5:16

scipy.stats has methods trim1() and trimboth() to cut the outliers out in a single row, according to the ranking and an introduced percentage of removed values.

Another option is to transform your data so that the effect of outliers is mitigated. You can do this by winsorizing your data.

import pandas as pd
from scipy.stats import mstats
%matplotlib inline

test_data = pd.Series(range(30))

Original data

# Truncate values to the 5th and 95th percentiles
transformed_test_data = pd.Series(mstats.winsorize(test_data, limits=[0.05, 0.05])) 

Winsorized data

If you like method chaining, you can get your boolean condition for all numeric columns like this:


Each value of each column will be converted to True/False based on whether its less than three standard deviations away from the mean or not.

a full example with data and 2 groups follows:


from StringIO import StringIO
import pandas as pd
#pandas config
pd.set_option('display.max_rows', 20)

Data example with 2 groups: G1:Group 1. G2: Group 2:

TESTDATA = StringIO("""G1;G2;Value




Read text data to pandas dataframe:

df = pd.read_csv(TESTDATA, sep=";")

Define the outliers using standard deviations

stds = 1.0
outliers = df[['G1', 'G2', 'Value']].groupby(['G1','G2']).transform(
           lambda group: (group - group.mean()).abs().div(group.std())) > stds

Define filtered data values and the outliers:

dfv = df[outliers.Value == False]
dfo = df[outliers.Value == True]

Print the result:

print '\n'*5, 'All values with decimal 1 are non-outliers. In the other hand, all values with 6 in the decimal are.'
print '\nDef DATA:\n%s\n\nFiltred Values with %s stds:\n%s\n\nOutliers:\n%s' %(df, stds, dfv, dfo)

My function for dropping outliers

def drop_outliers(df, field_name):
    distance = 1.5 * (np.percentile(df[field_name], 75) - np.percentile(df[field_name], 25))
    df.drop(df[df[field_name] > distance + np.percentile(df[field_name], 75)].index, inplace=True)
    df.drop(df[df[field_name] < np.percentile(df[field_name], 25) - distance].index, inplace=True)

Deleting and dropping outliers I believe is wrong statistically. It makes the data different from original data. Also makes data unequally shaped and hence best way is to reduce or avoid the effect of outliers by log transform the data. This worked for me:

np.log(data.iloc[:, :])

I prefer to clip rather than drop. the following will clip inplace at the 2nd and 98th pecentiles.

df_list = list(df)
minPercentile = 0.02
maxPercentile = 0.98

for _ in range(numCols):
    df[df_list[_]] = df[df_list[_]].clip((df[df_list[_]].quantile(minPercentile)),(df[df_list[_]].quantile(maxPercentile)))

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