Litcius/Paper detail

MULTI-LABEL RANKING METHOD BASED ON POSITIVE CLASS CORRELATIONS

Raed Alazaidah, Farzana Kabir Ahmad, Mohamad Farhan Mohamad Mohsin, Fadi Thabtah, Wael AlZoubi

2020Jordanian Journal of Computers and Information Technology17 citationsDOIOpen Access PDF

Abstract

Multi-label classification is a general type of classification that has attracted many researchers in the last two decades due to its applicability to many modern domains, such as scene classification, bioinformatics and text classification, among others. This type of classification allows instances to be associated with more than one class label at the same time. Class label ranking is a crucial problem in multi-label classification research, because it directly impacts the performance of the final classifiers, as labels with high ranks get a higher chance of being applied. This paper presents a new multi-label ranking algorithm called Multi-label Ranking based on Positive Correlations among labels (MLR-PC). MLR-PC captures positive correlations among labels to reduce the large search space and assigns the true rank per class label for multi-label classification problems. More importantly, MLR-PC utilizes novel problem transformation methods that facilitate exploiting accurate positive correlations among labels. This improves the predictive performance of the classification models derived. Empirical results using different multi-label datasets and five evaluation metrics reveal that the MLR-PC is superior to other commonly existing classification algorithms.

Topics & Concepts

Multi-label classificationRanking (information retrieval)Artificial intelligenceComputer scienceClass (philosophy)Machine learningRank (graph theory)CorrelationPattern recognition (psychology)Data miningMathematicsGeometryCombinatoricsText and Document Classification TechnologiesSpam and Phishing DetectionWeb Data Mining and Analysis