# Improving a fuzzy matching algorithm in Python

Task: Take two text files and output 100% matches and 75% matches.

Solution:

``````import difflib
import csv

# Imports and parses the files
fileA = open("H:/comm.names.txt", 'r')
try:
finally:
fileA.close()

fileB = open("H:/acad.names.txt", 'r')
try:
finally:
fileB.close()

# 100% Match
setMatch100 = set(setA).intersection(setB)

Match100 = open("H:\Match100.txt", 'w')
try:
for item in setMatch100:
Match100.write(item)
finally:
Match100.close()

# Remove 100% matches from the two lists
setA_LeftOver = set(setA).difference(setMatch100)
setB_LeftOver = set(setB).difference(setMatch100)

#Return the best match for setA_LeftOver[i] in setB_LeftOver that is at least 75% matching.
fMatch75 = open("H:\Match75.csv", 'w')
Match75 = csv.writer(fMatch75)
try:
Match75.writerow(['File A', 'File B'])
for item in setA_LeftOver:
match = difflib.get_close_matches(item, setB_LeftOver, 1, 0.75)
if len(match) > 0:
row = [item.rstrip(), match[0].rstrip()]
Match75.writerow(row)

finally:
fMatch75.close()
``````

Problem: This works, however the results aren't very good. Here is an example of a match:

`Fovea Pharmaceuticals SA Kobe Pharmaceutical Univ`
I can't turn up the minimum percent in Diff by too much because I need to be able to match Univ with University. Also, I can't just make sure that the first words match because some strings start with "The" and need to be matched with strings that exclude "The". Can anyone point me in a direction that would throw out matches that technically are 75% similar, but to a human aren't similar at all?

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