Affiliation:
1. Data Processing Department, Secretary general of Special Provincial Administration, Elazig, Turkey
2. Department of Software Engineering, Firat (Euphrates) University, Elazig, Turkey
Abstract
Classification rule mining represents a significant field of machine learning, facilitating informed decision-making through the extraction of meaningful rules from complex data. Many classification methods cannot simultaneously optimize both explainability and different performance metrics at the same time. Metaheuristic optimization-based solutions, inspired by natural phenomena, offer a potential paradigm shift in this field, enabling the development of interpretable and scalable classifiers. In contrast to classical methods, such rule extraction-based solutions are capable of classification by taking multiple purposes into consideration simultaneously. To the best of our knowledge, although there are limited studies on metaheuristic based classification, there is not any method that optimize more than three objectives while increasing the explainability and interpretability for classification task. In this study, data sets are treated as the search space and metaheuristics as the many-objective rule discovery strategy and study proposes a metaheuristic many-objective optimization-based rule extraction approach for the first time in the literature. Chaos theory is also integrated to the optimization method for performance increment and the proposed chaotic rule-based SPEA2 algorithm enables the simultaneous optimization of four different success metrics and automatic rule extraction. Another distinctive feature of the proposed algorithm is that, in contrast to classical random search methods, it can mitigate issues such as correlation and poor uniformity between candidate solutions through the use of a chaotic random search mechanism in the exploration and exploitation phases. The efficacy of the proposed method is evaluated using three distinct data sets, and its performance is demonstrated in comparison with other classical machine learning results.
Reference44 articles.
1. Mining interesting classification rules: an evolutionary approach;Al-Maqaleh;International Journal of Mathematical Engineering and Science,2021
2. A novel clinical decision support system for liver fibrosis using evolutionary multi-objective method based numerical association analysis;Altay;Medical Hypotheses,2020
3. Association rule mining using multi-objective evolutionary algorithms: strengths and challenges;Anand,2009
4. Searching for the optimal ordering of classes in rule induction;Ata,2012
5. Performance analysis of Apriori and fp-growth algorithms (association rule mining);Bala;International Journal of Computer Technology & Applications,2016