How can I implement the tf-idf and cosine similarity in Lucene? I'm using Lucene 4.2. The program that I've created does not use tf-idf and Cosine similaryty, it only uses TopScoreDocCollector.

import com.mysql.jdbc.Statement;
import java.io.BufferedReader;
import java.io.File;
import java.io.InputStreamReader;
import org.apache.lucene.analysis.standard.StandardAnalyzer;
import org.apache.lucene.util.Version;
import org.apache.lucene.index.IndexWriterConfig;
import org.apache.lucene.index.IndexWriter;

import java.sql.DriverManager;
import java.sql.Connection;
import java.sql.ResultSet;
import org.apache.lucene.analysis.id.IndonesianAnalyzer;
import org.apache.lucene.document.Document;
import org.apache.lucene.document.Field;
import org.apache.lucene.index.*;
import org.apache.lucene.queryparser.classic.ParseException;
import org.apache.lucene.queryparser.classic.QueryParser;
import org.apache.lucene.search.IndexSearcher;
import org.apache.lucene.search.Query;
import org.apache.lucene.search.ScoreDoc;
import org.apache.lucene.search.TopScoreDocCollector;
import org.apache.lucene.store.Directory;
import org.apache.lucene.store.FSDirectory;
import org.apache.lucene.store.RAMDirectory;

public class IndexMysqlDBStemming {

  public static void main(String[] args) throws Exception {

    // 1. Create Index From Database
    Connection connection = DriverManager.getConnection("jdbc:mysql://localhost/db_haiquran", "root", "");

    IndonesianAnalyzer analyzer = new IndonesianAnalyzer(Version.LUCENE_42);
    //StandardAnalyzer analyzer = new StandardAnalyzer(Version.LUCENE_42);
    QueryParser parser = new QueryParser(Version.LUCENE_42, "result", analyzer);

    Directory INDEX_DIR = new RAMDirectory();

    IndexWriterConfig config = new IndexWriterConfig(Version.LUCENE_42, analyzer);
    IndexWriter writer = new IndexWriter(INDEX_DIR, config);

    String query = "SELECT * FROM ayat";
    java.sql.Statement statement = connection.createStatement();
    ResultSet result = statement.executeQuery(query);

    while (result.next()) {
        Document document = new Document();
        document.add(new Field("NO_INDEX_AYAT", result.getString("NO_INDEX_AYAT"), Field.Store.YES, Field.Index.NOT_ANALYZED));
        document.add(new Field("NO_SURAT", result.getString("NO_SURAT"), Field.Store.YES, Field.Index.NOT_ANALYZED));
        document.add(new Field("NO_AYAT", result.getString("NO_AYAT"), Field.Store.YES, Field.Index.NOT_ANALYZED));
        document.add(new Field("TEXT_INDO", result.getString("TEXT_INDO"), Field.Store.YES, Field.Index.ANALYZED));
        document.add(new Field("TEXT_ARAB", result.getString("TEXT_ARAB"), Field.Store.YES, Field.Index.NOT_ANALYZED));
        writer.updateDocument(new Term("NO_INDEX_AYAT", result.getString("NO_INDEX_AYAT")), document);



    // 2. Query
    System.out.println("Enter your search keyword in here : ");
    BufferedReader bufferRead = new BufferedReader(new InputStreamReader(System.in));
    String s = bufferRead.readLine();
    String querystr = args.length > 0 ? args[0] :s;

    try {
        System.out.println(parser.parse(querystr)+"\n"); //amenit

    } catch (ParseException ex) {
        // Exception

    Query q = new QueryParser(Version.LUCENE_42, "TEXT_INDO", analyzer).parse(querystr);

    // 3. Search

    int hitsPerPage = 10;
    IndexReader reader = DirectoryReader.open(INDEX_DIR);
    IndexSearcher searcher = new IndexSearcher(reader);
    TopScoreDocCollector collector = TopScoreDocCollector.create(hitsPerPage, true);
    searcher.search(q, collector);
    ScoreDoc[] hits = collector.topDocs().scoreDocs;

    // 4. Display results

    System.out.println("Found : " + hits.length + " hits.");

    System.out.println("No" + " ID " + "\t" + " Surat " + "\t" + " No Ayat " + "\t" + " Terjemahan Ayat " + "\t" + " Teks Arab ");

    for (int i=0; i<hits.length; i++) {
       int docID = hits[i].doc;
       Document d = searcher.doc(docID);

       System.out.println((i+1) + ". " + d.get("NO_INDEX_AYAT") + "\t" + d.get("NO_SURAT") + "\t" + d.get("NO_AYAT")+ 
               "\t" + d.get("TEXT_INDO") + "\t" + d.get("TEXT_ARAB"));



How can I display the results of the calculation using tf-idf and cosine similarity?


Unless there is something I'm missing, you're already done. Well done!

The similarity algorithm being used by default is the DefaultSimilarity, but most of the documentation (and logic) you'll find in it's base class TFIDFSimilarity.

And TFIDFSimilarity is indeed an implementation of a TF-IDF and Cosine similarity scoring model.

  • thank you femtoRgon. Can you give examples of program code using TFIDFSimilarity and DefaultSimilarity? I've tried to calculate TF-idf but do not use the module in Lucene, this is my code: but less effective because its value is inserted into a variable, how to use code examples and DefaultSimilarity TFIDFSimilarity? – Tia Chandrawati Apr 25 '13 at 3:33
  • thank you femtoRgon. Can you give examples of program code using TFIDFSimilarity and DefaultSimilarity? I've tried to calculate TF-idf but do not use the module in Lucene : TermFreqVector tfv = ir.getTermFreqVector(docNum, "TEXT_INDO"); String terms[] = tfv.getTerms(); int termCount = terms.length; int freqs[] = tfv.getTermFrequencies(); for(int t=0; t < termCount; t++) { double weightTerms = (freqs[t] * (Math.log10(293/termCount) + 1)); but less effective because its value is inserted into a var – Tia Chandrawati Apr 25 '13 at 3:39
  • I'm afraid I may not understand what you are trying to do. Lucene applies a scoring algorithm, agreeing well with your specification, by default. Upon querying, you get an array of ScoreDocs, from which you can get the score via ScoreDoc.score, or in your case, as you loop through hits, you can just get hits[i].score. – femtoRgon Apr 25 '13 at 8:10

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.