Skip to content

MelvinMo/ROPAC-Rule-OPtimized-Aggregation-Classifier

Repository files navigation

ROPAC: Rule OPtimized Aggregation Classifier

Authors: Melvin Mokhtari, Alireza Basiri

Published in: Expert Systems with Applications, September 2024

Paper can be found:

Code and data can also be accessed:

  • google colab logo
  • Open in Code Ocean
  • DOI
  • Locally in this GitHub repository

Abstract

Rule OPtimized Aggregation Classifier (ROPAC) is a novel rule-based classifier that is introduced in two variants, ROPAC-L and ROPAC-M, to expand search space exploration and achieve better classification accuracy. This algorithm was evaluated on 50 diverse datasets, comparing accuracy with 15 famous algorithms, including ForestPA, LMT, MLP of Neural Networks, Random Forest, Optimized Forest, SPAARC, RACER, Bootstrap Aggregation (Bagging), C4.5, PART, the JRip implementation of RIPPER, SMO in SVM, Decision Tree (CART), IBk implementation of KNN, and Naïve Bayes. The experiments confirmed ROPAC-L as the most accurate, leading classifier.

Citation

If you found this work helpful, please star🌟 this repository and cite📑 our paper. Thank you for your support!

Mokhtari, M., & Basiri, A. (2024). ROPAC: Rule OPtimized Aggregation Classifier. Expert Systems with Applications, 123897.
@Article{Mokhtari2024,
	author = {Mokhtari, Melvin and Basiri, Alireza},
	title = {ROPAC: Rule OPtimized Aggregation Classifier},
	year = {2024},
	month = {9},
	day = {15},
	journal = {Expert Systems with Applications},
	volume = {250},
	doi = {https://doi.org/10.1016/j.eswa.2024.123897},
	url = {https://www.sciencedirect.com/science/article/pii/S0957417424007632},
	publisher = {Elsevier Ltd},
	issn = {09574174},
	coden = {ESAPE},
	language = {English},
	abbrev_source_title = {Expert Sys Appl},
	type = {Article}
}

Contact

If you have any questions about this repository, wish to request a feature or make a contribution, please open a GitHub issue, or feel free to contact melvmok@gmail.com.

About

Discover ROPAC, a novel rule-based classifier we proposed. Here, you'll find the code, data, and original paper detailing this groundbreaking data classification algorithm.

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published