Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm doing something wrong with merge and I can't understand what it is. I've done the following to estimate a histogram of a series of integer values:

import pandas as pnd
import numpy  as np

series = pnd.Series(np.random.poisson(5, size = 100))
tmp  = {"series" : series, "count" : np.ones(len(series))}
hist = pnd.DataFrame(tmp).groupby("series").sum()
freq = (hist / hist.sum()).rename(columns = {"count" : "freq"})

If I print hist and freq this is what I get:

> print hist
        count
series       
0           2
1           4
2          13
3          15
4          12
5          16
6          18
7           7
8           8
9           3
10          1
11          1

> print freq 
        freq
series      
0       0.02
1       0.04
2       0.13
3       0.15
4       0.12
5       0.16
6       0.18
7       0.07
8       0.08
9       0.03
10      0.01
11      0.01

They're both indexed by "series" but if I try to merge:

> df   = pnd.merge(freq, hist, on = "series")

I get a KeyError: 'no item named series' exception. If I omit on = "series" I get a IndexError: list index out of range exception.

I don't get what I'm doing wrong. May be "series" is an index and not a column so I must do it differently?

share|improve this question

1 Answer 1

up vote 8 down vote accepted

From docs:

on: Columns (names) to join on. Must be found in both the left and right DataFrame objects. If not passed and left_index and right_index are False, the intersection of the columns in the DataFrames will be inferred to be the join keys

I don't know why this is not in the docstring, but it explains your problem.

You can either give left_index and right_index:

In : pnd.merge(freq, hist, right_index=True, left_index=True)
Out:
        freq  count
series
0       0.01      1
1       0.04      4
2       0.14     14
3       0.12     12
4       0.21     21
5       0.14     14
6       0.17     17
7       0.07      7
8       0.05      5
9       0.01      1
10      0.01      1
11      0.03      3

Or you can make your index a column and use on:

In : freq2 = freq.reset_index()

In : hist2 = hist.reset_index()

In : pnd.merge(freq2, hist2, on='series')
Out:
    series  freq  count
0        0  0.01      1
1        1  0.04      4
2        2  0.14     14
3        3  0.12     12
4        4  0.21     21
5        5  0.14     14
6        6  0.17     17
7        7  0.07      7
8        8  0.05      5
9        9  0.01      1
10      10  0.01      1
11      11  0.03      3

Alternatively and more simply, DataFrame has join method which does exactly what you want:

In : freq.join(hist)
Out:
        freq  count
series
0       0.01      1
1       0.04      4
2       0.14     14
3       0.12     12
4       0.21     21
5       0.14     14
6       0.17     17
7       0.07      7
8       0.05      5
9       0.01      1
10      0.01      1
11      0.03      3
share|improve this answer
1  
Time to improve the merge docstring! –  Wes McKinney Apr 13 '12 at 22:23
    
@WesMcKinney: Nice :) –  Avaris Apr 13 '12 at 23:11

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.