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This solution works for the question in hand(so far tested with possible inputs) but the normal set operations to remove duplicates wont work if you dont implement the full contract for compare to return 1,0 and -1. Why dont you implement your own compare operation using the Set which can have only distinct values. It is going to be O(n log(n)). Set ...


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// prepare $sql = $db->prepare("SELECT * FROM table WHERE MATCH (id,keywords) AGAINST (:search IN BOOLEAN MODE) DESC LIMIT $start , $limit"); $sql->bindValue(':search', $search . '*', PDO::PARAM_STR); $sql->execute(); // fetch array results $results = $sql->fetch(PDO::FETCH_ASSOC); //run over results foreach ($results as $row) { // I ...


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We had a competition for fun at work about making the fastest levenshtein implementation and I came up with a faster one. First of all, I must say that it was not easy to beat your solution which was the fastest to find "out there". :) This is tested with node.js and it my benchmarks results indicates that this implementation is ~15% faster on small texts ...


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Do a self join in proc sql, using the result of compged as criteria for join condition : Example : proc sql ; create table similar_emails as select a.Email as EmailA, b.Email as EmailB from email_list a left join email_list b on compged(a.Email,b.Email) <= 200 order by a.Email ; quit ;


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I think that you are confusing the pypi package name with the module name, they are not the same thing. It is true that most of the time they are the same, as it makes sense to use the same name for both. Still, about 10-15% of existing pypi packages will install modules with different names, sometimes multiple modules as part of the same package. So, ...


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I think using the raw distance metric will be hard. You probably want to use some NLP methods (nltk) to do ner (named entity recognition), then use that result to compare.


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This groups the names from fuzzywuzzy import fuzz combined_list = ['rakesh', 'zakesh', 'bikash', 'zikash', 'goldman LLC', 'oldman LLC'] combined_list.append('bakesh') print('input names:', combined_list) grs = list() # groups of names with distance > 80 for name in combined_list: for g in grs: if all(fuzz.ratio(name, w) > 80 for w in g): ...


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This seems to be an old topic, however should anyone look for a MYSQL implementation of Damerau-Levenshtein distance, here is my own implementation (based upon a simple Levenshtein found elsewhere on this site), which works fine for strings less than 255 characters long. The third parameter can be set to FALSE to retrieve the basic Levenshtein distance: ...


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To get the closest output you could use this: Function get_match(ByVal str As String, rng As Range) As String Dim itm As Variant, outp(0 To 2) As Variant outp(1) = 0: outp(2) = "" For Each itm In rng.Text outp(0) = Levenshtein(itm, str) If outp(0) = 0 Then get_match = itm Exit Function ElseIf outp(1) = 0 Or outp(0) < outp(1) ...


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Apache Commons Lang 3.4 has this implementation: /** * <p>Find the Levenshtein distance between two Strings if it's less than or equal to a given * threshold.</p> * * <p>This is the number of changes needed to change one String into * another, where each change is a single character modification (deletion, * insertion or ...


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There are many nice software packages developed for that with various level of accuracy: Aligner Demo in Sphinx4 - CMUSphinx toolkit in java SAIL align - HTK-based aligner, quite some pack of perl scripts. Gentle - Kaldi-based aligner, works as a service.


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Your result is right. string1: F a c i a l . F u e l operation: S C S S S I I C I C S S I C S string2: C a l e n d u l a . T o n e r ('.' means ' ') Operations are C : Copy S : Substitue I : Insert D : Delete Levenshtein distance is S * 7 + I * 4 = 11


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I am working with Levenstein distances by my self and I have not found a good way to improve performance and will not recommend using it in a non-batch application. I suggest you use another approach by using a search tree. A binary or ternary search tree can also find near match. A good place to start is those articles: ...



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