As stated by most spelling corrector tutors, the correct word W^ for an incorrectly spelled word x is:
W^ = argmaxW P(X|W) P(W)
Where P(X|W) is the likelihood and P(W) is the Language model.
In the tutorial from where i am learning spelling correction, the instructor says that P(X|W) can be computed by using a confusion matrix which keeps track of how many times a letter in our corpus is mistakenly typed for another letter. I am using the World Wide Web as my corpus and it cant be guaranteed that a letter was mistakenly typed for another letter. So is it okay if i use the Levenshtein distance between X and W, instead of using the confusion matrix? Does it make much of a difference?
The way i am going to compute Lev. distance in python is this:
from difflib import SequenceMatcher def similar(a, b): return SequenceMatcher(None, a, b).ratio()
And here's the tutorial to make my question clearer: Click here
PS. i am working with Python