I am struggling to actually implement the classifying part of my investigations into the possibility of classifying music according to some features of music files.

What I have currently produced is code that reads a table of features from the DB and then puts it back into the DB in another table.

The problem is that I do not know how to work with the instances type. Documentation is crap - I have no clue what to do.

What I want to do: I want to use a given set of music files and compute their feature vectors. After this data has been put into arff, I would manually join it with genre data (the gial i.e.). and then save it into a MySQL table.

AFAIU the chain should be like this:

  • Read from DB

  • Somehow train a K-nearest neighbor classifier on a set of the features (related to genre) per music file for a body of 10 files.

  • Use this to classify a set of files with the same features but unknown genre.

  • Somehow output results so that they can be machine-readable in the database.

I have found no examples of the output of the data actually being used for further processing so I cannot further haggle :/

After this has been done, I would like to read it back and conduct a classification on a new body of music (the features I have computed by music or using a sample file set). The results should be put back into the DB in yet another new table, detailing what file has which category (assigned).

Here is my code:

package org.tuhh.cpmgg.weka;

import weka.core.*;
import weka.core.converters.*;
import weka.experiment.InstanceQuery;

import java.io.*;
import java.util.ArrayList;

import javax.ws.rs.GET;
import javax.ws.rs.Path;
import javax.ws.rs.Produces;
import javax.ws.rs.core.MediaType; 

public class weka_chain {

   * loads a dataset from mysql db
   * @param args the commandline arguments
    public String main() 
            throws Exception {

    java.util.List resultList;

    /*Gets data from DB*/

    InstanceQuery query = new InstanceQuery();
    query.setQuery("SELECT * FROM features"); //Read table
    Instances data = query.retrieveInstances(); //into data
    data.setClassIndex(data.numAttributes() - 1); //sets the number of classes (creates index)

    /*Classifiers */

    String algorithm = "weka.classifiers.bayes.NaiveBayes"; // Sets the type of classifier (many available)

    resultList = new ArrayList();

    Weka1 weka; 
    try {
        weka = new Weka1(algorithm, "lol");
        resultList = weka.weka(algorithm, data); //Essentially what is happening

        /* TODO:
         * Define Output so that it is in table form/instance form
         * This means creating output using the old applet and somehow (?) distilling it into table shape

    /* Saves Results to DB */

    DatabaseSaver save = new DatabaseSaver();
    // save.setUrl("jdbc:mysql://localhost:3306/weka_test");
    save.setPassword("PASS_ PASS");
    save.setInstances(data); // define outputtype

    return "done";
  • Are you running this on OpenShift? I don't see anything specific in your question about it. – user2879327 Dec 15 '13 at 6:44
  • Yes, I run this on OpenShift but due to building errors (build fails for other parts of the project so it stops dead in its tracks for all other parts) I have resorted to running it locally. – dawg Jan 5 '14 at 14:36
  • ** Additional Info ** – dawg Jan 5 '14 at 14:36

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