Simple KNN using iris data with euclidean distance or cosine distance.
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Updated
Apr 21, 2017 - Python
Simple KNN using iris data with euclidean distance or cosine distance.
Big data homework solutions
[PROJECT] A Python based poetry analyzer
String similarity functions, String distance's, Jaccard, Levenshtein, Hamming, Jaro-Winkler, Q-grams, N-grams, LCS - Longest Common Subsequence, Cosine similarity...
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