I'm doing a code challenge online involving finding the 'social network' of words who are related through their Levenshtein distances. My Levenshtein function is correct. I'm recursively adding to a global set, and I'm using a map of tuples to boolean values to cache whether or not any pair of words has a Levenshtein distance of 1. The code is supposed to terminate in 5 seconds. I'm not sure how this is even close to possible. I'm sure that there is some aha insight that makes this possible. Can anyone see that right off the bat?
Problem Statement: Two words are friends if they have a Levenshtein distance of 1. That is, you can add, remove, or substitute exactly one letter in word X to create word Y. A word’s social network consists of all of its friends, plus all of their friends, and all of their friends’ friends, and so on. Write a program to tell us how big the social network for the word 'hello' is, using this word list
get_network(friend) if friend not in network add friend to network friends =  check friend against all words in network consult cache or calculate lev distance cache if necessary, append to friends if necessary for all friends get_network(friend)
To rephrase the question: "what's the fundamental insight that makes possible an astronomical boost in efficiency?"