Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

Is there any package to load .arff format file into matlab? The .arff format is used in Weka for running machine learning algorithm.

share|improve this question

6 Answers 6

up vote 3 down vote accepted

Yes, there are a few MATLAB interfaces for WEKA files on MATLAB File Exchange, I normally use this one: where you have a saveARFF() and a loadARFF() functions.

share|improve this answer
any examples on how it is used? – mike_x_ Oct 4 '14 at 15:01
If you unzip the fileexchange files into your working directory you can use loadARFF in this way: data = loadARFF('myfile.arf'). – Matteo De Felice Oct 6 '14 at 7:14
I get an error but i ll check again. I have unzipped it and added the folder with subfolders in the path, by clicking the button "set path". Is it correct? Do i have to do anything else so as to import the toolkit? – mike_x_ Oct 6 '14 at 11:03
yes, it looks correct. What is the error? – Matteo De Felice Oct 6 '14 at 16:06

Since Weka is a Java library, you can directly use the API it exposes to read ARFF files:

%## paths
WEKA_HOME = 'C:\Program Files\Weka-3-7';
javaaddpath([WEKA_HOME '\weka.jar']);
fName = [WEKA_HOME '\data\iris.arff'];

%## read file
loader = weka.core.converters.ArffLoader();
loader.setFile( );
D = loader.getDataSet();
D.setClassIndex( D.numAttributes()-1 );

%## dataset
relationName = char(D.relationName);
numAttr = D.numAttributes;
numInst = D.numInstances;

%## attributes
%# attribute names
attributeNames = arrayfun(@(k) char(D.attribute(k).name), 0:numAttr-1, 'Uni',false);

%# attribute types
types = {'numeric' 'nominal' 'string' 'date' 'relational'};
attributeTypes = arrayfun(@(k) D.attribute(k-1).type, 1:numAttr);
attributeTypes = types(attributeTypes+1);

%# nominal attribute values
nominalValues = cell(numAttr,1);
for i=1:numAttr
    if strcmpi(attributeTypes{i},'nominal')
        nominalValues{i} = arrayfun(@(k) char(D.attribute(i-1).value(k-1)), 1:D.attribute(i-1).numValues, 'Uni',false);

%## instances
data = zeros(numInst,numAttr);
for i=1:numAttr
    data(:,i) = D.attributeToDoubleArray(i-1);

%## visualize data
parallelcoords(data(:,1:end-1), ...
    'Group',nominalValues{end}(data(:,end)+1), ...


You can even directly use its functionality from MATLAB. An example:

%## classification
classifier = weka.classifiers.trees.J48();
classifier.buildClassifier( D );
fprintf('Classifier: %s %s\n%s', ...
    char(classifier.getClass().getName()), ...
    char(weka.core.Utils.joinOptions(classifier.getOptions())), ...
    char(classifier.toString()) )

The output C4.5 decision tree:

Classifier: weka.classifiers.trees.J48 -C 0.25 -M 2
J48 pruned tree

petalwidth <= 0.6: Iris-setosa (50.0)
petalwidth > 0.6
|   petalwidth <= 1.7
|   |   petallength <= 4.9: Iris-versicolor (48.0/1.0)
|   |   petallength > 4.9
|   |   |   petalwidth <= 1.5: Iris-virginica (3.0)
|   |   |   petalwidth > 1.5: Iris-versicolor (3.0/1.0)
|   petalwidth > 1.7: Iris-virginica (46.0/1.0)

Number of Leaves  :     5

Size of the tree :  9
share|improve this answer

If you only want to load a file stored in "arff" format into Matlab, and don't need any other functionality from Weka, just remove the header part of your "arff" file (those attribute definitions), and save the file as csv format (you should replace class values with a numeric equivalences), and then use the built-in "csvread" function of Matlab. This way there is no need to find a third party package.

share|improve this answer

Searching the MATLAB Central File Exchange reveals some possibilities. In particular, the results from Durga Lal Shrestha and Gerald Augusto Corzo Perez look promising, though I haven't tried either.

share|improve this answer
M = importdata('filename.arff');

very slow for large files, but it works (tested in MATLAB 2010b)

share|improve this answer
This is hard to believe, given that the matlab documentation… doesn't call out arff. Unless matlab's importdata dumps all header/attribute information? – John Sep 23 '13 at 22:37

If the methods mentioned above do not work, and header information is required, load the arff file in weka, then select save as option and save the data using csv file format.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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