The MEKA project provides an open source implementation of methods for multi-label classification and evaluation. It is based on the WEKA Machine Learning Toolkit. Several benchmark methods are also included, as well as the pruned sets and classifier chains methods, other methods from the scientific literature, and a wrapper to the MULAN framework.
Version ▼ Vulnerabilities Repository Usages Date 1.9 .x
1.9.8 Central Sep 06, 2024 1.9.7 Central Oct 16, 2022 1.9.6 Central May 11, 2022 1.9.5 Central May 28, 2021 1.9.4 Central Dec 30, 2020 1.9.3 Central Oct 24, 2020 1.9.2 Central Mar 28, 2018 1.9.1 Central Apr 11, 2017 1.9.0 Central Nov 03, 2015 1.7 .x
1.7.7 Central Sep 09, 2015 1.7.6 Central Jun 13, 2015 1.7.5 Central Feb 15, 2015 1.7.3 Central Sep 28, 2014 1.6 .x
1.6.2 Central May 26, 2014 1.6.0 Central May 26, 2014 1.5 .x
1.5.0 Central May 26, 2014
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