I have a training text file with the following format (pos, word, tag):
1 i PRP
2 'd MD
3 like VB
4 to TO
5 go VB
6 . .
1 i PRP
I am trying to build a dictionary so that when I input a new corpus with the following format (pos, word):
I will be able to tag these from the dictionary I've built with the training data.
the method I'm using is a counter in default dictionary to find the most common tag for a word. From my counter, I'm getting print results like this:
i PRP 7905
'd MD 1262
like VB 2706
like VBP 201
like UH 95
like IN 112
to TO 4822
to IN 922
So for the word "like", the tag with the highest counts is 'VB' at 2706. I want to my dictionary to take the tag with the highest count and attach it to my word so that if I put a test data set with just the (pos, word), it will return that tag. Here's my code so far:
file=open("/Users/Desktop/training.txt").read().split('\n') from collections import Counter, defaultdict word_tag_counts = defaultdict(Counter) for row in file: if not row.strip(): continue pos, word, tag = row.split() word_tag_counts[word.lower()][tag] += 1 stats = word_tag_counts max(stats, key=stats.get) with open('/Users/Desktop/training.txt','r') as file: for line in file.readlines(): column = line.split('\t') with open('/Users/Desktop/output.txt','w') as file: for tag, num in d.items(): file.write("\t".join([column, column, tag])+"\n")
I'm getting the error: TypeError: '>' not supported between instances of 'Counter' and 'Counter'
my output goal is in the same format as the original training file (pos pulled from original txt file, word from original txt file, tag from my dictionary):
Not sure what I can, i tried using lambda as well but it's not working. Anything will help. Thanks.