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I am making a dictionary using lines of data in a text file. The first three columns of data become form the key and the data in the fourth column forms the value for the dictionary. The code for that is as follows:

def formatter(lines):
    for line in lines:
        if not line.strip(): continue
        yield [to_float(item) for item in line.split()]

 dct1 = {}
 with open('test.txt') as f1:
     for row in formatter(f1):
        dct1[tuple(row[:3])] = row[3]

This code works. The problem comes that there are repeats of the key in the file that the data is being pulled from e.g. the file might have the two lines:

1  2  3  50
1  2  3  100

The final dictionary, dct1, however will only contain the second of these lines: dct1[(1,2,3)]=[100]. What I am trying to do, and can't at the moment, is that each time the program tries to overwrite a key, to instead average the values for the given key i.e. so if the above two lines were read in, the value for the key (1,2,3) would 75 (average of 50 and 100).

Any help would be much appreciated. Many thanks

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And what if the key occurs 3 times or more? Still the average? –  Martijn Pieters Apr 17 '13 at 10:15
    
Yes. There are varying numbers of repeats in the dataset which complicates the solution somewhat –  user1171835 Apr 17 '13 at 10:24
    
Not at all, I find that that makes the solution simpler, see my answer below. –  Martijn Pieters Apr 17 '13 at 10:24
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2 Answers

up vote 2 down vote accepted

To calculate the average for multiple keys, you'd need to collect all values first, then calculate the averages afterwards.

Use collections.defaultdict to make collecting values easy:

from collections import defaultdict

dct1 = defaultdict(list)

with open('test.txt') as f1:
    for row in formatter(f1):
       dct1[tuple(row[:3])].append(row[3])

dct1 = {k: sum(v)/len(v) for k, v in dct1.iteritems()}

First dct1 is a dictionary mapping keys to lists of values. The dict comprehension then replaces that with a dictionary mapping keys to the averages.

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In the last line of this code I keep getting that: TypeError: 'float' object is not iterable –  user1171835 Apr 17 '13 at 11:32
    
@user1171835: that makes no sense. Can you insert a print dict1[dict1.keys()[0]] before that line to show me what type of values you have now? –  Martijn Pieters Apr 17 '13 at 11:35
    
453.18 before running into the error –  user1171835 Apr 17 '13 at 11:38
    
@user1171835: Then you didn't run my code, or you are re-applying the list line twice. –  Martijn Pieters Apr 17 '13 at 11:40
1  
@user1171835: You are missing the .append(row[3]) part. You are replacing the list provided by the defaultdict instead of adding the float to it. –  Martijn Pieters Apr 17 '13 at 12:37
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Once you've averaged the first two, finding the third will screw you up, because you won't know whether the value in the dict is a single value or the average of two previous. You'll need to keep the count in the dict as well:

for row in formatter(f1):
    key = tuple(row[:3])
    if key not in dct1:
        dct1[key] = (1, row[3])
    else:
        val = dct1[key]
        dct1[key] = (val[0] + 1, (val[0] * val[1] + row[:3]) / (val[0] + 1))

Now each element in the dict has a count and a average. Instead of using dct1[key], you'll have to use dct1[key][1].

share|improve this answer
    
And afterwards you'll have to remove the counts again. May as well calculate the average after the fact, since you have to loop through all entries again anyway. –  Martijn Pieters Apr 17 '13 at 10:28
    
Only if you need the final dict to be exactly as he specified. Either your way (dict of tuples) or mine build a dict that contains the information he wants, he just has to retrieve it differently. Mine by a simple [1], yours by calculating the average. Mine is faster, yours is probably less likely to accumulate rounding errors. –  Lee Daniel Crocker Apr 17 '13 at 10:34
    
Sure, fair enough, if the OP is willing to put up with small rounding errors and extra data in the output, this is a fair solution. –  Martijn Pieters Apr 17 '13 at 10:39
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