Litcius/Paper detail

HML-RF: Hybrid Multi-Label Random Forest

Vikas Jain, Ashish Phophalia, Suman K. Mitra

2022IEEE Access11 citationsDOIOpen Access PDF

Abstract

Multi-label classification is the supervised learning problem in which an instance is associated with a set of labels. In this, labels are correlated, and hence label dependency information plays a vital role. Its always been a question of research to decide the order of labels to exploit their inter-dependency. Hence, to this end, many research works are done that, in general, can be categorized as problem transformation and algorithm adaptation techniques. The problem transformation reconstructs the multi-label problem as a multiple single class problem. The algorithm transformation modifies the existing well-known machine learning approaches to solve the multi-label classification problem. However, these two techniques have their pros and cons. In this paper, we propose a novel approach to consider the merits of both techniques, hence named Hybrid Multi-Label Random Forest (HML-RF). The multi-label decision trees are used as base classifiers in the proposed approach to construct the HML-RF model. Each base classifier is constructed over a randomly selected subset of labels to exploit the label dependency. We also formulate a way to compute the tree strength of a multi-label decision tree, which is used to construct the HML-RF with strength (HML-RFws). The efficacy of the proposed approach is tested over the ten well-known and publicly available datasets. Experimental results show the HML-RF is performing better for at-least six datasets, and the HML-RFws is performing better for at-least nine datasets in comparison to state-of-the-art approaches in terms of accuracy, hamming loss, and zero-one loss. Finally, the statistical test is also validating all the experimental results.

Topics & Concepts

Computer scienceExploitRandom forestMulti-label classificationClassifier (UML)Decision treeArtificial intelligenceMachine learningDependency (UML)Transformation (genetics)Set (abstract data type)Construct (python library)Class (philosophy)Data miningTree (set theory)Pattern recognition (psychology)MathematicsComputer securityBiochemistryProgramming languageGeneChemistryMathematical analysisText and Document Classification TechnologiesMachine Learning and Data ClassificationFace and Expression Recognition
HML-RF: Hybrid Multi-Label Random Forest | Litcius