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I've downloaded my Twitter archive and I'm trying to do some analysis on who I have talked to the most.

Tweets CSV columns look like this:

tweet_id,in_reply_to_status_id,in_reply_to_user_id,retweeted_status_id,retweeted_status_user_id,timestamp,source

I've used read_csv() to import the tweets.csv file into a dataframe called "indata".

Then, to get a list of all the @handles mentioned in tweets, I used the following:

handles = indata['text'].str.findall('@[a-zA-Z0-9_-]*')

Result:

timestamp
...
2013-04-12 11:24:27                                [@danbarker]
2013-04-12 11:22:32                                  [@SeekTom]
2013-04-12 10:50:45    [@33Digital, @HotwirePR, @kobygeddes, @]
2013-04-12 08:00:03                              [@mccandelish]
2013-04-12 07:59:01                                [@Mumbrella]
...
Name: text, dtype: object

What I'd like to be able to do is group by the individual handles and dates, to show counts of who I've spoken to the most over the years.

Any suggestions?

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1 Answer 1

up vote 2 down vote accepted

A purely pandas way might be to apply the Series constructor to put this into one DataFrame and stack into a Series (so you can use value_counts)... if you didn't care about the index/timestamp you could use collections (which may be faster):

In [11]: df = pd.DataFrame([['@a @b'], ['@a'], ['@c']], columns=['tweets'])

In [12]: df
Out[12]:
  tweets
0  @a @b
1     @a
2     @c

In [13]: at_mentions = df['tweets'].str.findall('@[a-zA-Z0-9_]+')

Note: I'd use + rather than * here since I don't think @ by itself should be included.

In [14]: at_mentions
Out[14]:
0    [@a, @b]
1        [@a]
2        [@c]
Name: tweets, dtype: object

Using collections' Counter this is very easy:

In [21]: from collections import Counter

In [22]: Counter(at_mentions.sum())
Out[22]: Counter({'@a': 2, '@b': 1, '@c': 1})

The pandas way will keep the index (time) information.

Apply Series constructor to get a DataFrame and stack it into a Series:

In [31]: all_mentions = at_mentions.apply(pd.Series)

In [32]: all_mentions
Out[33]:
    0    1
0  @a   @b
1  @a  NaN
2  @c  NaN

We can tidy the names here to be more descriptive about what's going on:

In [33]: all_mentions.columns.name = 'at_number'

In [34]: all_mentions.index.name = 'tweet'  # this is timestamp in your example

Now when we stack, we see the names of the levels:

In [35]: all_mentions = all_mentions.stack()

In [36]: all_mentions
Out[36]:
tweet  at_number
1      0            @a
       1            @b
2      0            @a
3      0            @c
dtype: object

We could do lots of other analysis here, for example value_counts:

In [37]: all_mentions.value_counts()
Out[37]:
@a    2
@c    1
@b    1
dtype: int64

The final result is equivalent to pd.Series(Counter(at_mentions.sum())).

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Really comprehensive answer, thanks Andy. The pandas native way works for me - I like the idea of keeping the timestamps so I can group by date - but thanks for introducing me to collections.Counter too. –  Phil Sheard Aug 6 '13 at 0:19

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