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I have a pandas dataframe that has columns:

'video' and 'link' of click values

with an index of datetime. For some reason, when I use semilogy and boxplot with the video series, I get the error

ValueError: Data has no positive values, and therefore can not be log-scaled.

but when I do it on the 'link' series I can draw the boxplot correctly.

I have verified that both the 'video' and 'link' series has NaN values and positive values.

Any thoughts on why this is occurring? Below is what I've done to verify that this is the case

Below is sample code:

#get all the not null values of video to show that there are positive
temp=a.types_pivot[a.types_pivot['video'].notnull()]
print temp

#get a count of all the NaN values to show both 'video' and 'link' has NaN
count = 0 
for item in a.types_pivot['video']:
    if(item.is_integer() == False):
        count += 1

#try to draw the plots
print "there is %s nan values in video" % (count)

fig=plt.figure(figsize=(6,6),dpi=50)
ax=fig.add_subplot(111)
ax.semilogy()
plt.boxplot(a.types_pivot['video'].values)

Here is relevant output from the code for video series

    type                       link   video
    created_time
2011-02-10 15:00:51+00:00 NaN 5 2011-02-17 17:50:38+00:00 NaN 5 2011-03-22 14:04:56+00:00 NaN 5

there is 5463 nan values in video

I run the same exact code except I do

a.types_pivot['link'] 

and I am able to draw the boxplot.

Below is the relevant output from the link series


Index: 5269 entries, 2011-01-24 20:03:58+00:00 to 2012-06-22 16:56:30+00:00
Data columns:
link        5269  non-null values
photo       0  non-null values
question    0  non-null values
status      0  non-null values
swf         0  non-null values
video       0  non-null values
dtypes: float64(6)

there is 216 nan values in link

Using the describe function

a.types_pivot['video'].describe()

<pre>
count    22.000000
mean     16.227273
std      15.275040
min       1.000000
25%       5.250000
50%       9.500000
75%      23.000000
max      58.000000
</pre>
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1  
Did you try removing NaNs from a.types_pivot['video'].values? –  Zhenya Jun 26 '12 at 7:32
    
Great point Zhenya! Yes, I did try that. plt.boxplot(temp['video']) by using my temp variable that I had the non null values and it did work. I do not understand why it doesn't work when I call it directly since it works for the 'link' series. If it works, then I can easily use pandas .boxplot and .hist functions with semilog to compare the data –  Bonnie Yu MSFT Jun 26 '12 at 12:06

1 Answer 1

Note: I'm unable to upload images due to some issue with imgur. I'll try again later.

Take advantage of pandas matplotlib helper / wrappers by calling pd.DataFrame.boxplot(). I believe this will take care of the NaN values for you. It will also put both Series in the same plot so you can easily compare data.

Example Create a dataframe with some NaN values and negative values

In [7]: df = pd.DataFrame(np.random.rand(10, 5))    
In [8]: df.ix[2:4,3] = np.nan
In [9]: df.ix[2:3,4] = -0.45
In [10]: df
Out[10]: 
          0         1         2         3         4
0  0.391882  0.776331  0.875009  0.350585  0.154517
1  0.772635  0.657556  0.745614  0.725191  0.483967
2  0.057269  0.417439  0.861274       NaN -0.450000
3  0.997749  0.736229  0.084077       NaN -0.450000
4  0.886303  0.596473  0.943397       NaN  0.816650
5  0.018724  0.459743  0.472822  0.598056  0.273341
6  0.894243  0.097513  0.691781  0.802758  0.785258
7  0.222901  0.292646  0.558909  0.220400  0.622068
8  0.458428  0.039280  0.670378  0.457238  0.912308
9  0.516554  0.445004  0.356060  0.861035  0.433503

Note that I can count the number of NaN values like so:

In [14]: df[3].isnull().sum()   # Count NaNs in the 4th column
Out[14]: 3

A box plot is simply:

In [16]: df.boxplot()

You could create a semi-log boxplot, for example, by:

In [23]: np.log(df).boxplot()

Or, more generally, modify / transform to you heart's content, and then boxplot.

In [24]: df_mod = np.log(df).dropna()    
In [25]: df_mod.boxplot()
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