Comparing the speed and accuracy of multi-label classification models

Closed

Aswin Wibisurya, Ford Lumban Gaol, Kuncoro Wastuwibowo

2015 International Review on Computers and Software Vol. 10 Issue 8 Article Cited by 1 Quartile

Abstract

A fast and accurate multi-label classification method is needed to manage a rapidly increasing number of journal articles which can include more than one field of study. This research’s purposes are to compare the speed and accuracy of two multi-label classification models. The first model combines Label Powerset (LP), ReliefF (RF) and Fuzzy Similarity-based k-Nearest Neighbor (FSkNN). The second model combines LP, Distinguishing Feature Selector (DFS), and FSkNN. Speed is measured by training time and testing time consumed, while accuracy is measured using hamming loss. Based on the experiment, LP-DFS-FSkNN is faster and more accurate since its training time and hamming loss are less than LP-RF-FSkNN’s while the testing time of both models are the same. © 2015 Praise Worthy Prize S.r.l. - All rights reserved.

Affiliations

Nusantara University, Indonesia; University of Indonesia, Indonesia; Electronics Engineering, Brawijaya University, Indonesia