Kind of a Python noob here. I have Python code from Matthew Russell's books "21 Recipes for Mining Twitter" and "Mining the Social Web" that I want to use for a project to collect various kinds of data from the Twitter API See his github page here: https://github.com/ptwobrussell
One thing I can't figure out is how to generate a network matrix/graph from the relationships between a user and his/her followers/friends. So for example, here is his Python code for collecting the friends of a user on Twitter (also here: https://github.com/ptwobrussell/Recipes-for-Mining-Twitter/blob/master/recipe__get_friends_followers.py):
# -*- coding: utf-8 -*- import sys import twitter from recipe__make_twitter_request import make_twitter_request import functools SCREEN_NAME = sys.argv MAX_IDS = int(sys.argv) if __name__ == '__main__': # Not authenticating lowers your rate limit to 150 requests per hr. # Authenticate to get 350 requests per hour. t = twitter.Twitter(domain='api.twitter.com', api_version='1') # You could call make_twitter_request(t, t.friends.ids, *args, **kw) or # use functools to "partially bind" a new callable with these parameters get_friends_ids = functools.partial(make_twitter_request, t, t.friends.ids) # Ditto if you want to do the same thing to get followers... # getFollowerIds = functools.partial(make_twitter_request, t, t.followers.ids) cursor = -1 ids =  while cursor != 0: # Use make_twitter_request via the partially bound callable... response = get_friends_ids(screen_name=SCREEN_NAME, cursor=cursor) ids += response['ids'] cursor = response['next_cursor'] print >> sys.stderr, 'Fetched %i total ids for %s' % (len(ids), SCREEN_NAME) # Consider storing the ids to disk during each iteration to provide an # an additional layer of protection from exceptional circumstances if len(ids) >= MAX_IDS: break # Do something useful with the ids like store them to disk... print ids
So I have managed to successfully run this code with a given user as the primary user for the command line argument. But how do I actually get this data into a matrix that I can then analyze, run formulas on (like centrality), etc...? So far I have figured that I probably need to use a combination of packages which may include NetworkX, Redis, and Matplotlib, but the step of actually generating this matrix eludes me.