Read, JesseReutemann, PeterPfahringer, BernhardHolmes, Geoffrey2016-04-2620162016-04-262016Read, J., Reutemann, P., Pfahringer, B., & Holmes, G. (2016). MEKA: A multi-label/multi-target extension to WEKA. Journal of Machine Learning Research, 17(21), 1–5.1533-7928https://hdl.handle.net/10289/10136Multi-label classification has rapidly attracted interest in the machine learning literature, and there are now a large number and considerable variety of methods for this type of learning. We present MEKA: an open-source Java framework based on the well-known WEKA library. MEKA provides interfaces to facilitate practical application, and a wealth of multi-label classifiers, evaluation metrics, and tools for multi-label experiments and development. It supports multi-label and multi-target data, including in incremental and semi- supervised contexts.application/pdfen© 2016 Jesse Read, Peter Reutemann, Bernhard Pfahringer, and Geoff Holmes.classificationlearningmulti-labelmulti-targetincrementalcomputer scienceMachine learningMEKA: A multi-label/multi-target extension to WEKAJournal Article