# Matplotlib logarithmic scale with zero value [duplicate]

I have a very large and sparse dataset of spam twitter accounts and it requires me to scale the x axis in order to be able to visualize the distribution (histogram, kde etc) and cdf of the various variables (tweets_count, number of followers/following etc).

``````    > describe(spammers_class1\$tweets_count)
var       n   mean      sd median trimmed mad min    max  range  skew kurtosis   se
1   1 1076817 443.47 3729.05     35   57.29  43   0 669873 669873 53.23  5974.73 3.59
``````

In this dataset, the value 0 has a huge importance (actually 0 should have the highest density). However, with a logarithmic scale these values are ignored. I thought of changing the value to 0.1 for example, but it will not make sense that there are spam accounts that have 10^-1 followers.

So, what would be a workaround in python and matplotlib ?

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it would be nice if you put your axes/plot code so as to be corrected. –  Stephane Rolland May 5 '13 at 9:29
use `symlog` stackoverflow.com/questions/3305865/… –  tcaswell Aug 4 '13 at 6:20

## marked as duplicate by tcaswell, tiago, Sergio, Saullo Castro, Lin-ArtAug 4 '13 at 11:17

Add 1 to each `x` value, then take the log:

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

fig, ax = plt.subplots()
x = [0, 10, 100, 1000]
y = [100, 20, 10, 50]
x = np.asarray(x) + 1
y = np.asarray(y)
ax.plot(x, y)
ax.set_xscale('log')
ax.set_xlim(x.min(), x.max())
ax.xaxis.set_major_formatter(ticker.FuncFormatter(lambda x, pos: '{0:g}'.format(x-1)))
ax.xaxis.set_major_locator(ticker.FixedLocator(x))
plt.show()
``````

Use

``````ax.xaxis.set_major_formatter(ticker.FuncFormatter(lambda x, pos: '{0:g}'.format(x-1)))
ax.xaxis.set_major_locator(ticker.FixedLocator(x))
``````

to relabel the tick marks according to the non-log values of `x`.

(My original suggestion was to use `plt.xticks(x, x-1)`, but this would affect all axes. To isolate the changes to one particular axes, I changed all commands calls to `ax`, rather than calls to `plt`.)

`matplotlib` removes points which contain a `NaN`, `inf` or `-inf` value. Since `log(0)` is `-inf`, the point corresponding to `x=0` would be removed from a log plot.

If you increase all the x-values by 1, since `log(1) = 0`, the point corresponding to `x=0` will not be plotted at `x=log(1)=0` on the log plot.

The remaining x-values will also be shifted by one, but it will not matter to the eye since `log(x+1)` is very close to `log(x)` for large values of `x`.

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yes, but I will not be able to say in my paper that 50% of spammers have 0 followers. because it will be shown as 10^0 and this will mean that they have one follower (which is different). –  amaatouq May 5 '13 at 9:43
You could relabel the tick marks with `plt.xticks`. I've edited the post to show how. –  unutbu May 5 '13 at 9:50
In order not to shift all of the data. How can I efficiently add 0.1 to 0 values, so they will come up at the 10^-1 and then relabel the ticks ? I know this is another question. but It might be a better way of doing it without contaminating all of the data -shifting only 0 values- (and looping over large numpy arrays is very slow) –  amaatouq May 5 '13 at 10:04
If you have an array with many 0 values, you can change them to 0.1 with `x[x<=0] = 0.1`. Note that if the array is of dtype `int`, then you must first convert the array to dtype `float`: `x = x.astype('float')`. –  unutbu May 5 '13 at 10:17
I protest in the strongest terms to modifying data before plotting it. –  tcaswell Aug 4 '13 at 6:19
``````ax1.set_xlim(0, 1e3)
``````ax1.set_xlim(1e1, 1e3)