ACRIPPER: A New Associative Classification Based on RIPPER Algorithm

Author:

Abu-Arqoub Mohammed1,Hadi Wael2,Ishtaiwi Abdelraouf1

Affiliation:

1. Department of Computer Science, University of Petra, Amman, Jordan

2. Department of Information Security, University of Petra, Amman, Jordan

Abstract

Associative Classification (AC) classifiers are of substantial interest due to their ability to be utilised for mining vast sets of rules. However, researchers over the decades have shown that a large number of these mined rules are trivial, irrelevant, redundant, and sometimes harmful, as they can cause decision-making bias. Accordingly, in our paper, we address these challenges and propose a new novel AC approach based on the RIPPER algorithm, which we refer to as ACRIPPER. Our new approach combines the strength of the RIPPER algorithm with the classical AC method, in order to achieve: (1) a reduction in the number of rules being mined, especially those rules that are largely insignificant; (2) a high level of integration among the confidence and support of the rules on one hand and the class imbalance level in the prediction phase on the other hand. Our experimental results, using 20 different well-known datasets, reveal that the proposed ACRIPPER significantly outperforms the well-known rule-based algorithms RIPPER and J48. Moreover, ACRIPPER significantly outperforms the current AC-based algorithms CBA, CMAR, ECBA, FACA, and ACPRISM. Finally, ACRIPPER is found to achieve the best average and ranking on the accuracy measure.

Publisher

World Scientific Pub Co Pte Lt

Subject

Library and Information Sciences,Computer Networks and Communications,Computer Science Applications

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. ARTC: feature selection using association rules for text classification;Neural Computing and Applications;2022-09-07

2. Predicting stress levels of automobile drivers using classical machine learning classifiers;2022 International Conference on Business Analytics for Technology and Security (ICBATS);2022-02-16

3. A New Two-step Ensemble Learning Model for Improving Stress Prediction of Automobile Drivers;The International Arab Journal of Information Technology;2021

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