@article{MAKHILLJEAS2019141918483, title = {Investigating the Applicability of Several Fuzzy-Based Classifiers on Multi-Label Classification}, journal = {Journal of Engineering and Applied Sciences}, volume = {14}, number = {19}, pages = {7210-7217}, year = {2019}, issn = {1816-949x}, doi = {jeasci.2019.7210.7217}, url = {https://makhillpublications.co/view-article.php?issn=1816-949x&doi=jeasci.2019.7210.7217}, author = {Mo`ath,Ahmad and}, keywords = {Classification,fuzzy-logic,fuzzy-based classifiers,machine learning,multi-label classification,datasets}, abstract = {In the last few decades, fuzzy logic has been extensively used in several domains such as economy, decision making, logic and classification. In specific, fuzzy logic which is a powerful mathematical representation has shown a superior performance with uncertainty real-life applications comparing with other learning approaches. Many researchers utilized the concept of fuzzy logic in solving the traditional single label classification problems of both types: binary classification and multi-class classification. Unfortunately, very few researches have utilized fuzzy logic in a more general type of classification that is called Multi-Label Classification (MLC). Hence, this study aims to examine the applicability of fuzzy logic to be used with MLC through evaluating several fuzzy-based classifiers on five different multi-label datasets. The results revealed that the utilizing fuzzy-based classifiers on solving the problem of MLC is promising comparing with a wide range of MLC algorithms that belong to several learning approaches and strategies.} }