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I am using Lucene in JAVA and indexing a table in our database based on company name. After the index I wish to do a fuzzy match (Levenshtein distance) on a value we wish to input into the database. The reason is that we do not want to be entering dupes because of spelling errors.

For example if I have the company name "Widget Makers XYZ" I don't want to insert "Widget Maker XYZ".

From what I've read Lucene's fuzzy match algorithm should give me a number between 0 and 1, I want to do some testing and then determine and adequate value for us determine what is valid or invalid.

The problem is I am stuck, and after searching what seems like everywhere on the internet, need the StackOverflow community's help.

Like I said I have indexed the database on company name, and then have the following code:

IndexSearcher searcher = new IndexSearcher(directory);  

new QueryParser(Version.LUCENE_30, "company", analyzer);

Query fuzzy_query = new FuzzyQuery(new Term("company", "Center"));

I encounter the problem afterwards, basically I do not know how to get the fuzzy match value. I know the code must look something like the following, however no collectors seem to fit my needs. (As you can see right now I am only able to count the number of matches, which is useless to me)

TopScoreDocCollector collector = TopScoreDocCollector.create(10, true);, collector);

System.out.println("\ncollector.getTotalHits() = " + collector.getTotalHits());

Also I am unable to use the ComplexPhraseQueryParser class which is shown in the Lucene documentation. I am doing:

import org.apache.lucene.queryParser.*;

Does anybody have an idea as to why its inaccessible or what I am doing wrong? Apologies for the length of the question.

share|improve this question

You do not need Lucene to get the score. Take a look at Simmetrics library, it is exceedingly simple to use. Just add the jar and use it thus:

Levenstein ld = new Levenstein ();
float sim = ld.GetSimilarity(string1, string2);

Also do note, depending on the type of data (i.e. longer strings, # whitespaces etc.), you might want to look at other algorithms such as Jaro-Winkler, Smith-Waterman etc.

You could use the above to determine to collapse fuzzy duplicate strings into one "master" string and then index.

share|improve this answer
I'm looking at the Simmetrics library and it does look very promising. I wanted to use Lucene because of its indexing abilities since I am searching a database of 60K or more company names. Is Simmetrics compatible with Lucene on any level? – user387049 Jul 29 '10 at 14:20
Hmm not sure why you need SimMetrics to be compatible - whatever that means. Write an app to loop through the db rows and cluster the names by similarity using Simmetrics - you can play around with various thresholds to determine best fit. So you create a lookup table "Widget Makers XYZ", -< "Widget Maker XYZ", "Widgt Maker XYZ", Widget Makers XY".... and so on... where Widget Makers XYZ becomes the master string, which is what you write to index. – Mikos Jul 29 '10 at 14:46
Sorry for being unclear, I meant can SimMetrics read from the index that Lucene creates? I'd rather not create any unneeded or temporary tables, unless I have to. And want a fast match time. My layout for the program was: 1) Index all companies by name with Lucene, store the index in RAM. 2) Each company name that wants to be inserted has to meet a certain algorithmic requirement that is TBD, but is going to rely on Leinshtein's algorithm and then (if needed) the double metaphone algorithm. And possibly some from the SimMetrics library now. – user387049 Jul 29 '10 at 15:13
Not sure if Simmetrics can read from Lucene, prolly not. You can have the following 2-step approach: 1. create an index and for each company that needs to be inserted query the index (this should give you a workable subset say 10 results to run the string dist comparison) 2. Compare the new co. name to the 10 results and see if new passes the threshold or is a dupe. BTW Levenstein is included in SimMetrics so you need not implement it yourself. – Mikos Jul 29 '10 at 16:07

You can get the match values with:

TopDocs topDocs = collector.topDocs();
for(ScoreDoc scoreDoc : topDocs.scoreDocs) {
share|improve this answer
Of what type should the collector be? I get no output when I run this. – user387049 Jul 29 '10 at 14:24

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