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I'm plotting some data from various tests. Sometimes in a test I happen to have one outlier (say 0.1), while all other values are three orders of magnitude smaller.

With matplotlib, I plot against the range [0, max_data_value]

How can I just zoom into my data and not display outliers, which would mess up the x-axis in my plot?

Should I simply take the 95 percentile and have the range [0, 95_percentile] on the x-axis?

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What kind of plot? Scatter? Histogram? –  David Robinson Aug 9 '12 at 14:39
    
I'm plotting with histograms. –  Ricky Robinson Aug 9 '12 at 14:41

2 Answers 2

up vote 10 down vote accepted

There's no single "best" test for an outlier. Ideally, you should incorporate a-priori information (e.g. "This parameter shouldn't be over x because of blah...").

Most tests for outliers use the median absolute deviation, rather than the 95th percentile or some other variance-based measurement. Otherwise, the variance/stddev that is calculated will be heavily skewed by the outliers.

Here's a function that implements one of the more common outlier tests.

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

As an example of using it, you'd do something like the following:

import numpy as np
import matplotlib.pyplot as plt

# The function above... In my case it's in a local utilities module
from sci_utilities import is_outlier

# Generate some data
x = np.random.random(100)

# Append a few "bad" points
x = np.r_[x, -3, -10, 100]

# Keep only the "good" points
# "~" operates as a logical not operator on boolean numpy arrays
filtered = x[~is_outlier(x)]

# Plot the results
fig, (ax1, ax2) = plt.subplots(nrows=2)

ax1.hist(x)
ax1.set_title('Original')

ax2.hist(filtered)
ax2.set_title('Without Outliers')

plt.show()

enter image description here

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This is a great answer (+1 from me), but I think '~' is a bitwise not, not a logical not - seems not matter here for reasons I'm not 100% clear about, but in other places it would. ~False != True, but not False == True –  Will Dean Nov 13 '12 at 13:24
1  
Good point! In numpy, it's overloaded to operate as logical not on boolean arrays (e.g. ~np.array(False) == True), but this isn't the case for anything else. I should clarify that. (On a side note, by convention not some_array will raise a value error if some_array has more than one element. Thus the need for ~ in the example above.) –  Joe Kington Nov 14 '12 at 12:58
    
Thanks for the response - I actually tried 'not' and got the error you predict, so I was even more mystified... –  Will Dean Nov 14 '12 at 13:45
    
This breaks when the median deviation is zero. That happened to me when I naively loaded a data set in with more than 50% zeros. –  Wesley Tansey Mar 22 at 12:58

If you aren't fussed about rejecting outliers as mentioned by Joe and it is purely aesthetic reasons for doing this, you could just set your plot's x axis limits:

plt.xlim(min_x_data_value,max_x_data_value)

Where the values are your desired limits to display.

plt.ylim(min,max) works to set limits on the y axis also.

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For a histogram, though, the OP would also need to recalculate the bins. Matplotlib uses fixed bin edges. It doesn't "rebin" when you zoom in. –  Joe Kington Aug 9 '12 at 15:25

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