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About

DMLT was a machine learning toolbox used in the FieldTrip toolbox for classification of MEG and EEG data. It is not maintained any more and not recommended for new research. See fieldtrip/website#594 and fieldtrip/fieldtrip#2225.

Historical documentation

About

DMLT is a machine learning toolbox written in Matlab and C. This toolbox is developed at the Donders Institute for Brain, Cognition and Behaviour and provides a general interface to support the integration of new statistical machine learning methods by writing high level wrappers. It allows complex methods to be built from simple building blocks and makes the use of cross-validation and permutation testing as easy as writing one line of Matlab code. The code requires at least Matlab distribution 7.6.0.324 (R2008a).

Most functions in this toolbox are licensed under the GNU General Public License (GPL), see http://www.gnu.org for details. Unauthorised copying and distribution of functions that are not explicitely covered by the GPL is not allowed. This code comes without warranty of any kind.

Installation

The most recent version of DMLT can be downloaded as a zipfile from https://github.com/distrep/DMLT/zipball/master

It is recommended though to use install DMLT by cloning the repository:

git clone git://github.com/distrep/DMLT.git

or, if you have write privileges, using:

git clone [email protected]:distrep/DMLT.git

The repository may then always be updated to the latest version by issuing the git pull command in the toolbox root folder.

Documentation

DMLT documentation is added automatically to the Matlab help facility when adding DMLT to the search path, e.g. using:

addpath(genpath(pwd))

assuming you start your Matlab session in the DMLT root folder. You may also browse html/guide.html for a quick guide on how to use DMLT.

Developers

Marcel van Gerven ([email protected]), Ali Bahramisharif ([email protected]), Jason Farquhar ([email protected]), Tom Heskes ([email protected])