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I have a pandas Series with an integer index which I've sorted (by value), how I access values by position in this Series.

For example:

s_original = pd.Series({0: -0.000213, 1: 0.00031399999999999999, 2: -0.00024899999999999998, 3: -2.6999999999999999e-05, 4: 0.000122})
s_sorted = np.sort(s_original)

In [3]: s_original
Out[3]: 
0   -0.000213
1    0.000314
2   -0.000249
3   -0.000027
4    0.000122

In [4]: s_sorted
Out[4]: 
2   -0.000249
0   -0.000213
3   -0.000027
4    0.000122
1    0.000314

In [5]: s_sorted[3]
Out[5]: -2.6999999999999999e-05

But I would like to get the value 0.000122 i.e. the item in position 3.
How can I do this?

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2 Answers

up vote 3 down vote accepted

Replace the line

b = np.sort(a)

with

b = pd.Series(np.sort(a), index=a.index)

This will sort the values, but keep the index.

EDIT:

To get the fourth value in the sorted Series:

np.sort(a).values[3]
share|improve this answer
    
I exchanged the row with this sample_mean_series_sorted = pandas.Series(np.sort(sample_mean_series), index=sample_mean_series.index). But it did not sort my issue. To clearify, I want to retrieve a specific row in the sorted Series. An example, get value for row four which is 0.000122. –  Ahlden Jan 22 '13 at 10:08
    
@Ahlden - ok, now I see what you mean. See my edited answer. –  eumiro Jan 22 '13 at 10:17
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You can use iget to retrieve by position:
(In fact, this method was created especially to overcome this ambiguity.)

In [1]: s = pd.Series([0, 2, 1])

In [2]: s.sort()

In [3]: s
Out[3]: 
0    0
2    1
1    2

In [4]: s.iget(1)
Out[4]: 1

.

The behaviour of .ix with an integer index is noted in the pandas "gotchas":

In pandas, our general viewpoint is that labels matter more than integer locations. Therefore, with an integer axis index only label-based indexing is possible with the standard tools like .ix.

This deliberate decision was made to prevent ambiguities and subtle bugs (many users reported finding bugs when the API change was made to stop “falling back” on position-based indexing).

Note: this would work if you were using a non-integer index, where .ix is not ambiguous.

For example:

In [11]: s1 = pd.Series([0, 2, 1], list('abc'))

In [12]: s1
Out[12]: 
a    0
b    2
c    1

In [13]: s1.sort()

In [14]: s1
Out[14]: 
a    0
c    1
b    2

In [15]: s1.ix[1]
Out[15]: 1
share|improve this answer
    
Also worth mentioning this feature request on github. –  Andy Hayden Jan 22 '13 at 22:12
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