I have a pos-tag list of word in a csv file, each word with his pos tag for example:

[(what,WP) (makes,VBZ) (them,PRP) (do,VB) (it,PRP)] etc...

I want the nodes to be the TAG (WP,VBZ,PRP..) and the attributes the edges in a consecutive form for example the list of edges will be:

[(what,makes) (makes,them) (them,do) (do,it)] it... So the I could remove duplicated nodes but still have all the attributes going out of the node and in.. I have this so far

G=nx.MultiGraph()
files = glob.glob('C:/Users/Sebastian/Desktop/prueba3/*.csv')
for path in files:
dirname, filename = os.path.split(path)
with open ('C:/Users/Sebastian/Desktop/prueba3/%s' %filename) as csvfile:
        csv_reader = csv.reader(csvfile, delimiter=',')
        for row in csv_reader:
            new_node = row[1]               
            new_attributes = row[:1]
            G.add_node(new_node, my_attributes=new_attributes)

Using zip to create the appropriate pairings between consecutive words in the sentence makes this simple. I also use add_edge instead since this automatically adds the nodes as well. Note the third parameter of add_edge allows you to take in a key parameter that can be used to identify that unique edge in a nx.MultiGraph object. I am not sure what exactly is the format of your .csv file, so I am just passing in a sentence as a list containing tuples of (word, POS) for the following example. Hope this helps!

from collections import defaultdict
import networkx as nx

G = nx.MultiGraph()

sentence = [
    ("what", "WP"), 
    ("makes", "VBZ"),
    ("them", "PRP"), 
    ("do", "VB"),
    ("it", "PRP"),
]

for pair0, pair1 in zip(sentence[:-1], sentence[1:]):
    w0, t0 = pair0
    w1, t1 = pair1
    edge_key = "{0} {1}".format(w0, w1)
    G.add_edge(t0, t1, edge_key)

print(G.nodes)#['WP', 'VBZ', 'PRP', 'VB']
print(G.edges)#[('WP', 'VBZ', 'what makes'), ('VBZ', 'PRP', 'makes them'), ('PRP', 'VB', 'them do'), ('PRP', 'VB', 'do it')]
  • thanks for the answer!, I will try that approach – Sebastian Cánepa Oct 29 '17 at 20:08

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