# Pythonic way of detecting outliers in one dimensional observation data

For the given data, I want to set the outlier values (defined by 95% confidense level or 95% quantile function or anything that is required) as nan values. Following is the my data and code that I am using right now. I would be glad if someone could explain me further.

``````import numpy as np, matplotlib.pyplot as plt

data = np.random.rand(1000)+5.0

plt.plot(data)
plt.xlabel('observation number')
plt.ylabel('recorded value')
plt.show()
``````
• You know your data better but I would think that Winsorising would be better than deletion. Moreover, if set those data as nan, you then have to handle that. Take a look at np.percentile function. Mar 12, 2014 at 14:18
• Aug 18, 2017 at 1:16

The problem with using `percentile` is that the points identified as outliers is a function of your sample size.

There are a huge number of ways to test for outliers, and you should give some thought to how you classify them. Ideally, you should use a-priori information (e.g. "anything above/below this value is unrealistic because...")

However, a common, not-too-unreasonable outlier test is to remove points based on their "median absolute deviation".

Here's an implementation for the N-dimensional case (from some code for a paper here: https://github.com/joferkington/oost_paper_code/blob/master/utilities.py):

``````def is_outlier(points, thresh=3.5):
"""
Returns a boolean array with True if points are outliers and False
otherwise.

Parameters:
-----------
points : An numobservations by numdimensions array of observations
thresh : The modified z-score to use as a threshold. Observations with
a modified z-score (based on the median absolute deviation) greater
than this value will be classified as outliers.

Returns:
--------
mask : A numobservations-length boolean array.

References:
----------
Boris Iglewicz and David Hoaglin (1993), "Volume 16: How to Detect and
Handle Outliers", The ASQC Basic References in Quality Control:
Statistical Techniques, Edward F. Mykytka, Ph.D., Editor.
"""
if len(points.shape) == 1:
points = points[:,None]
median = np.median(points, axis=0)
diff = np.sum((points - median)**2, axis=-1)
diff = np.sqrt(diff)
med_abs_deviation = np.median(diff)

modified_z_score = 0.6745 * diff / med_abs_deviation

return modified_z_score > thresh
``````

This is very similar to one of my previous answers, but I wanted to illustrate the sample size effect in detail.

Let's compare a percentile-based outlier test (similar to @CTZhu's answer) with a median-absolute-deviation (MAD) test for a variety of different sample sizes:

``````import numpy as np
import matplotlib.pyplot as plt
import seaborn as sns

def main():
for num in [10, 50, 100, 1000]:
# Generate some data
x = np.random.normal(0, 0.5, num-3)

x = np.r_[x, -3, -10, 12]
plot(x)

plt.show()

if len(points.shape) == 1:
points = points[:,None]
median = np.median(points, axis=0)
diff = np.sum((points - median)**2, axis=-1)
diff = np.sqrt(diff)
med_abs_deviation = np.median(diff)

modified_z_score = 0.6745 * diff / med_abs_deviation

return modified_z_score > thresh

def percentile_based_outlier(data, threshold=95):
diff = (100 - threshold) / 2.0
minval, maxval = np.percentile(data, [diff, 100 - diff])
return (data < minval) | (data > maxval)

def plot(x):
fig, axes = plt.subplots(nrows=2)
for ax, func in zip(axes, [percentile_based_outlier, mad_based_outlier]):
sns.distplot(x, ax=ax, rug=True, hist=False)
outliers = x[func(x)]
ax.plot(outliers, np.zeros_like(outliers), 'ro', clip_on=False)

kwargs = dict(y=0.95, x=0.05, ha='left', va='top')
axes.set_title('Percentile-based Outliers', **kwargs)
fig.suptitle('Comparing Outlier Tests with n={}'.format(len(x)), size=14)

main()
``````    Notice that the MAD-based classifier works correctly regardless of sample-size, while the percentile based classifier classifies more points the larger the sample size is, regardless of whether or not they are actually outliers.

• Joe,+1,This is a great answer. Although I am wondering, if the OP's data always uniformly disturbed (`random.rand()`), or may always follow some other distribution most of the time. If the data is always uniformly disturbed, I am not sure about using `MAD`. Mar 12, 2014 at 16:53
• @CTZhu - Good point, especially if the OP's data is, say, log-normally distributed. For vaguely symmetric distributions, deviations from a normal distribution shouldn't matter too much, for but strongly asymmetric distributions such as lognormal, MAD isn't a good choice. (Though you could always apply it in log-space to get around that.) All of this just serves to underscore the point that you should put some thought into whatever outlier test you choose. Mar 12, 2014 at 17:58
• @JoeKington every where you are using median, but `diff` is calculated as L2 norm ( `**2` ); median is the value which minimizes L1 norm, whereas in L2 norm 'mean' is the center; i was expecting that if you start with median stay in L1 norm. do you have any reason `**2` would work better than absolute values in calculating `diff`? Mar 12, 2014 at 21:15
• in your mad based outlier detection, how did you set the values 0.6745 and 3.5 for what purpose, how to determine those values? it's very confusing
– user3410943
Apr 2, 2014 at 8:07
• Alternative mirror for @JoeKington 's PDF paper pdf-archive.com/2016/07/29/outlier-methods-external/… Jul 29, 2016 at 19:18

Detection of outliers in one dimensional data depends on its distribution

1- Normal Distribution :

1. Data values are almost equally distributed over the expected range : In this case you easily use all the methods that include mean ,like the confidence interval of 3 or 2 standard deviations(95% or 99.7%) accordingly for a normally distributed data (central limit theorem and sampling distribution of sample mean).I is a highly effective method. Explained in Khan Academy statistics and Probability - sampling distribution library.

One other way is prediction interval if you want confidence interval of data points rather than mean.

1. Data values are are randomly distributed over a range: mean may not be a fair representation of the data, because the average is easily influenced by outliers (very small or large values in the data set that are not typical) The median is another way to measure the center of a numerical data set.

Median Absolute deviation - a method which measures the distance of all points from the median in terms of median distance http://www.itl.nist.gov/div898/handbook/eda/section3/eda35h.htm - has a good explanation as explained in Joe Kington's answer above

2 - Symmetric Distribution : Again Median Absolute Deviation is a good method if the z-score calculation and threshold is changed accordingly

3 - Asymmetric Distribution : Double MAD - Double Median Absolute Deviation Explanation in the above attached link

Attaching my python code for reference :

`````` def is_outlier_doubleMAD(self,points):
"""
FOR ASSYMMETRIC DISTRIBUTION
Returns : filtered array excluding the outliers

Parameters : the actual data Points array

Calculates median to divide data into 2 halves.(skew conditions handled)
Then those two halves are treated as separate data with calculation same as for symmetric distribution.(first answer)
Only difference being , the thresholds are now the median distance of the right and left median with the actual data median
"""

if len(points.shape) == 1:
points = points[:,None]
median = np.median(points, axis=0)
medianIndex = (points.size/2)

leftData = np.copy(points[0:medianIndex])
rightData = np.copy(points[medianIndex:points.size])

median1 = np.median(leftData, axis=0)
diff1 = np.sum((leftData - median1)**2, axis=-1)
diff1 = np.sqrt(diff1)

median2 = np.median(rightData, axis=0)
diff2 = np.sum((rightData - median2)**2, axis=-1)
diff2 = np.sqrt(diff2)

med_abs_deviation1 = max(np.median(diff1),0.000001)
med_abs_deviation2 = max(np.median(diff2),0.000001)

threshold1 = ((median-median1)/med_abs_deviation1)*3
threshold2 = ((median2-median)/med_abs_deviation2)*3

#if any threshold is 0 -> no outliers
if threshold1==0:
threshold1 = sys.maxint
if threshold2==0:
threshold2 = sys.maxint
#multiplied by a factor so that only the outermost points are removed
modified_z_score1 = 0.6745 * diff1 / med_abs_deviation1
modified_z_score2 = 0.6745 * diff2 / med_abs_deviation2

filtered1 = []
i = 0
for data in modified_z_score1:
if data < threshold1:
filtered1.append(leftData[i])
i += 1
i = 0
filtered2 = []
for data in modified_z_score2:
if data < threshold2:
filtered2.append(rightData[i])
i += 1

filtered = filtered1 + filtered2
return filtered
``````
• In Python 3, it should be `medianIndex = int(points.size/2)`. Also, if I run the code and set a threshold to zero, it crashes with the message `name 'sys' is not defined`. Laslty, the `self` in the function call never gets used. Apr 29, 2019 at 13:56
• you can also use: medianIndex = points.size//2 to avoid float value Aug 6, 2020 at 19:19

I've adapted the code from http://eurekastatistics.com/using-the-median-absolute-deviation-to-find-outliers and it gives the same results as Joe Kington's, but uses L1 distance instead of L2 distance, and has support for asymmetric distributions. The original R code did not have Joe's 0.6745 multiplier, so I also added that in for consistency within this thread. Not 100% sure if it's necessary, but makes the comparison apples-to-apples.

``````def doubleMADsfromMedian(y,thresh=3.5):
# warning: this function does not check for NAs
# nor does it address issues when
# more than 50% of your data have identical values
m = np.median(y)
abs_dev = np.abs(y - m)
modified_z_score = 0.6745 * abs_dev / y_mad
modified_z_score[y == m] = 0
return modified_z_score > thresh
``````
• How to use MAD based approach on multivariate data? The article you mentioned is great but works on single dimensional data I guess. I would like to know the simplest way to modify it to make it applicable for multivariate data as well. Nov 18, 2015 at 20:12
• There's no easy way to do this for multivariate data. A simple way is to just apply the method to one variable at a time and see if some samples are outliers in any dimensions. Nov 19, 2015 at 22:05
• @sergeyf How do we choose the threshold ? Read through the original post , couldn't dig it there as well .
– ekta
Feb 2, 2016 at 10:20
• @ekta the usual and unfortunate answer is try a bunch of different thresholds with your actual data and see what gets left out. Since this is 1-D you can do visualizations like the ones in Joe Kington's answer. If it makes it easier you can think of the threshold as sort of like the number of standard deviations. So 3.5 is a lot. But I've used numbers closer to 6 before - just depends on your data. Feb 9, 2016 at 17:49
• @TheAG Ah I see what you're saying. The reason I made it absolute is that we don't care if the outlier is in the right tail or the left tail. But if you care, then removing the absolute value makes sense! Sep 26, 2020 at 17:16

Well a simple solution can also be, removing something which outside 2 standard deviations(or 1.96):

``````import random
def outliers(tmp):
"""tmp is a list of numbers"""
outs = []
mean = sum(tmp)/(1.0*len(tmp))
var = sum((tmp[i] - mean)**2 for i in range(0, len(tmp)))/(1.0*len(tmp))
std = var**0.5
outs = [tmp[i] for i in range(0, len(tmp)) if abs(tmp[i]-mean) > 1.96*std]
return outs

lst = [random.randrange(-10, 55) for _ in range(40)]
print lst
print outliers(lst)
``````
• is this for python 2 ? Oct 26, 2017 at 9:53
• what should i use instead of `xrange` in python 3 ? Oct 26, 2017 at 9:58
• xrange in python 2 is same as range in python 3. No more xrange in python 3. Nov 4, 2017 at 22:47

Use `np.percentile` as @Martin suggested:

``````percentiles = np.percentile(data, [2.5, 97.5])

# or =>, <= for within 95%
data[(percentiles<data) & (percentiles>data)]

# set the outliners to np.nan
data[(percentiles>data) | (percentiles<data)] = np.nan
``````
• Using percentiles of the data as an outlier test is a reasonable first pass, but it's not ideal. The problem is 1) that you'll remove some data, even if it's not an outlier, and 2) the outliers heavily influence the variance, and therefore the percentile values. The most common outlier tests use "median absolute deviation" which is less sensitive to the presence of outliers. Mar 12, 2014 at 15:03
• @Joe Kington I would be grateful if you could implement your way using python code.
– user3410943
Mar 12, 2014 at 15:13
• @Joe Kington i saw the link you answered. However, is not there a more easier way to make it primarily using the functions available in numpy
– user3410943
Mar 12, 2014 at 15:27
• @julie - That function extensively uses numpy (it requires a numpy array as input and outputs a numpy array). An outlier test is far beyond the scope of `numpy`. (`numpy` itself just contains the core data structure and a few basic operations. It's deliberately small.) You can make an argument that `scipy.stats` would be a reasonable place for an outlier test, but there are many of them, and there's no single best test. Therefore, there isn't currently a single-function outlier test. Mar 12, 2014 at 15:30
• Statsmodels has a median-absolute deviation function in `sm.robust.mad`. I'm not sure there are facilities for univariate outlier tests, but there are for influence/outliers in a regression framework. Will see about adding some tools for univariate outlier detection. Mar 12, 2014 at 16:17