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I have a very large dataframe (~1.7MM rows x 6 columns). A simplified example of the relevant data is:

City        Borough

Brooklyn    Brooklyn
Astoria     Queens
Astoria     Unspecified
Ridgewood   Unspecified
Ridgewood   Queens

So I'm trying to fill the 'Unspecified' values based on the information from the City column. So for example, the City Ridgewood is in an Unspecified Borough in one instance, but correctly has the Borough listed as Queens elsewhere in the dataset.

I've already explored Panda's fillna, but it doesn't seem to meet my needs. I've also considered the np.where method, but I'm not sure how'd it work in this situation. I'm pretty new to Pandas, but maybe the map/apply function are what I need? This can probably be accomplished a thousand different ways, but looking for something that won't crawl given the size of the data.

EDIT: I was able to create a dictionary which contains the highest occurring "pairs" between cities and boroughs with the following code:

specified = data[['Borough','City']][data['Borough']!= 'Unspecified']
paired = specified.Borough.groupby(specified.City).max()
paired = paired.to_dict()

The paired dict has the city as the key and the borough as the value. Now the last step is to apply/map it back to the borough column...how do I do that?

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After the replacement, do you want duplicate values for these? That is, do you want to wind up with two identical rows that say "Astoria"/"Queens"? Or can you just remove the ones with an unspecified value? –  BrenBarn Nov 19 '12 at 0:08
    
Yes, duplicates are okay and expected. –  ChrisArmstrong Nov 19 '12 at 0:42

2 Answers 2

up vote 3 down vote accepted

Here's one way:

>>> d
         City      Borough
0   Brooklyn     Brooklyn
1    Astoria       Queens
2    Astoria  Unspecified
3  Ridgewood  Unspecified
4  Ridgewood       Queens
>>> realData = d[d.Borough != "Unspecified"]
>>> realData = pandas.Series(data=realData.Borough.values, index=realData.City)
>>> d['Borough'] = d.City.map(realData)
>>> d
         City   Borough
0   Brooklyn  Brooklyn
1    Astoria    Queens
2    Astoria    Queens
3  Ridgewood    Queens
4  Ridgewood    Queens

This assumes that every City has exactly one non-unspecified Borough value. (If a city has no value but Unspecified, the borough will show up as NA.)

Edit: If you've already created your dict as in your edited post, just use d['Borough'] = d.City.map(paired['Borough']) to map each city to the borough from your dict. map is a useful method to know about. It can map values either with a Pandas series, with a dict, or with a function that returns the mapped value given the key.

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There are cases when when the same city may be paired with different boroughs, for instance the city 'New York' is mapped to the Borough Manhattan in like 97% of occurrences, but how does map handle that situation? –  ChrisArmstrong Nov 19 '12 at 1:06
    
@ChrisArmstrong: It won't work if a city appears with multiple different boroughs. But what do you want to happen in that case? How do you want to choose? –  BrenBarn Nov 19 '12 at 1:11
    
See my edit above –  ChrisArmstrong Nov 19 '12 at 1:13
    
@ChrisArmstrong: See my edited answer. You can just use data.City.map(paired) to get the new boroughs. –  BrenBarn Nov 19 '12 at 1:15
    
ugh, it seems like the code specified.Borough.groupby(specified.City).max() did not produce the expected results...trying to figure out how to correct –  ChrisArmstrong Nov 19 '12 at 1:29

Maybe something like this? Admittedly this leans a little more to the Python side than the pandas side, but it should work:

>>> import pandas as pd
>>> df = pd.DataFrame({"City": "Brooklyn Astoria Astoria Ridgewood Ridgewood".split(),
...                    "Borough": "Brooklyn Queens Unspecified Unspecified Queens".split()})
>>> df
       Borough       City
0     Brooklyn   Brooklyn
1       Queens    Astoria
2  Unspecified    Astoria
3  Unspecified  Ridgewood
4       Queens  Ridgewood
>>>
>>> unspecified = df["Borough"] == 'Unspecified'
>>> known = df[~unspecified]
>>> known_dict = {c: set(tuple(b["Borough"].values)) for c, b in known.groupby("City")}
>>> 
>>> known_dict
{'Brooklyn': set(['Brooklyn']), 'Astoria': set(['Queens']), 'Ridgewood': set(['Queens'])}
>>> 
>>> # sanity check
... if not all(len(known_val) == 1 for known_val in known_dict.values()):
...     raise Exception("ambiguity!")
... 
>>> known_dict = {c: max(b) for c, b in known_dict.items()}
>>> 
>>> df["Borough"][unspecified] = df["City"][unspecified].apply(known_dict.get)
>>> df
    Borough       City
0  Brooklyn   Brooklyn
1    Queens    Astoria
2    Queens    Astoria
3    Queens  Ridgewood
4    Queens  Ridgewood
share|improve this answer
    
This works but it's a bit convoluted. You can use the map method to get the same effect more directly. (See my answer.) –  BrenBarn Nov 19 '12 at 0:56
    
@BrenBarn: I couldn't figure out how to deal with possible ambiguities that way, though. Can you? –  DSM Nov 19 '12 at 0:59
    
You could use .duplicated() to pick the first (or last) value among duplicates. The OP didn't specify anything about duplicates, though. –  BrenBarn Nov 19 '12 at 1:10
    
See my edit above for update –  ChrisArmstrong Nov 19 '12 at 1:13

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