4

I am very new to python programming. I am trying to take a csv file that has two columns of string values and want to compare the similarity ratio of the string between both columns. Then I want to take the values and output the ratio in another file.

The csv may look like this:

Column 1|Column 2 
tomato|tomatoe 
potato|potatao 
apple|appel 

I want the output file to show for each row, how similar the string in Column 1 is to Column 2. I am using difflib to output the ratio score.

This is the code I have so far:

import csv
import difflib

f = open('test.csv')

csf_f = csv.reader(f)

row_a = []
row_b = []

for row in csf_f:
    row_a.append(row[0])
    row_b.append(row[1])

a = row_a
b = row_b

def similar(a, b):
    return difflib.SequenceMatcher(a, b).ratio()

match_ratio = similar(a, b)

match_list = []
for row in match_ratio:
    match_list.append(row)

with open("output.csv", "wb") as f:
    writer = csv.writer(f, delimiter=',')
    writer.writerows(match_list)

f.close()

I get the error:

Traceback (most recent call last):
  File "comparison.py", line 24, in <module>
    for row in match_ratio:
TypeError: 'float' object is not iterable

I feel like I am not importing the column list correctly and running it against the sequencematcher function.

5 Answers 5

3

Here is another way to get this done using pandas:

Consider your csv data is like this:

Column 1,Column 2 
tomato,tomatoe 
potato,potatao 
apple,appel

CODE

import pandas as pd
import difflib as diff
#Read the CSV
df = pd.read_csv('datac.csv')
#Create a new column 'diff' and get the result of comparision to it
df['diff'] = df.apply(lambda x: diff.SequenceMatcher(None, x[0].strip(), x[1].strip()).ratio(), axis=1) 
#Save the dataframe to CSV and you could also save it in other formats like excel, html etc
df.to_csv('outdata.csv',index=False)

Result

Column 1,Column 2 ,diff
tomato,tomatoe ,0.923076923077
potato,potatao ,0.923076923077
apple,appel ,0.8
1
  • This worked really well. I need to explore pandas some more. Thanks!
    – Jimmy
    Commented Apr 25, 2016 at 13:51
2

The for loop you're setting up here expects something like an array where you have match_ratio, and judging by the error you're getting, that's not what you have. It looks like you're missing the first argument for difflib.SequenceMatcher, which should probably be None. See 6.3.1 here: https://docs.python.org/3/library/difflib.html

Without that first argument specified, I think you're getting back 0.0 from difflib.SequenceMatcher and then trying to run ratio off of that. Even if you correct your SequenceMatcher call, I think you'll still be trying to iterate on a single float value that ratio is returning. I think you need to call SequenceMatcher inside the loop for each set of values you're comparing.

So you'd wind up with a call more like this in your function: difflib.SequenceMatcher(None, a, b). Or if you'd prefer, since these are named arguments, you could do something like this: difflib.SequenceMatcher(a=a, b=b).

2
  • I'll also add that renaming row_a and row_b to a and b halfway through is really confusing. It's easy to forget that you're dealing with two lists here, not two string values that you can compare. Commented Apr 22, 2016 at 20:29
  • Ah, that makes a lot of sense. I see what you are referring to.
    – Jimmy
    Commented Apr 22, 2016 at 20:36
1

Your sample file looks like it contains markup tags. Assuming you are actually reading a CSV file, the error you are getting is because match_ratio is not an iterable datatype, it's a floating point number -- the return value of your function: similar(). In your code, the function call would have to be contained within a for loop to call it for each a, b string pair. Here's a working example I created that does away with the explicit for loops and uses a list comprehension instead:

import csv
from difflib import SequenceMatcher

path_in = 'csv1.csv'
path_out = 'csv2.csv'

with open(path_in, 'r') as csv_file_in:
    csv_reader = csv.reader(csv_file_in)
    col_headers = csv_reader.next()
    for row in csv_reader:
        results = [[row[0],
                    row[1],
                    SequenceMatcher(None, row[0], row[1]).ratio()]
                    for row in csv_reader]

with open(path_out, 'wb') as csv_file_out:
    col_headers.append('Ratio')
    out_rows = [col_headers] + results
    writer = csv.writer(csv_file_out, delimiter=',')
    writer.writerows(out_rows)

In addition to the error you received you might also have run into a problem when instantiating the SequenceMatcher object -- its first parameter wasn't specified in your code. You can find more on list comprehensions and SequenceMatcher in the Python docs. Good luck in your future Python coding.

1

You are getting that error because the records row[0] or row[1] contain most probably NaN values. Try forcing them to string first by making str(row[0]) and str(row[1])

0

You are getting the error because you are running SequenceMatcher on the list of strings, rather than on the strings themselves. When you do this, you get back a single float value, rather than the list of ration values I think you were expecting.

If I understand what you are trying to do, then you don't need to read in the rows first. You can simply find the diff ratio as you iterate through the rows.

import csv
import difflib

match_list = []
with open('test.csv') as f:
    csv_f = csv.reader(f)
    for row in csv_f:
        match_list.append([difflib.SequenceMatcher(a=row[0], b=row[1]).ratio()])

with open('output.csv', 'w') as f:
    writer = csv.writer(f, delimiter=',')
    writer.writerows(match_list)
2
  • Wow, that is so much cleaner than what I have. I tried running this code and a sample csv file and produces this error: writer.writerows(match_list) _csv.Error: sequence expected
    – Jimmy
    Commented Apr 22, 2016 at 20:33
  • Sorry, I updated my post to fix this. writerows is expecting an iterable of iterables, but my solution was passing an iterable of floats.
    – dlshriver
    Commented Apr 22, 2016 at 21:10

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.