Ahmad Ilham, L. Assaffat, L. Khikmah, S. Safuan, Suprapedi Suprapedi
{"title":"k-Means Cluster-based Random Undersampling and Meta-Learning Approach for Village Development Status Classification","authors":"Ahmad Ilham, L. Assaffat, L. Khikmah, S. Safuan, Suprapedi Suprapedi","doi":"10.30630/joiv.7.2.989","DOIUrl":null,"url":null,"abstract":"There is a significant imbalanced class in the village development index (called IDM - Indeks Desa Membangun) dataset, marked by the number of self-supporting classes more than the disadvantaged class. The traditional classifiers are able to achieve high accuracy (ACC) by training all cases of the majority class but forsaking the minority class, so that possible for the classification results to be biased. In this study, a random under-sampling technique was employed based on k-means cluster (KMC) and a meta-learning approach to improving ACC of the village status classification model. Furthermore, the AdaBoost and Random Forest were used as meta technique and base learner, respectively. The proposed model has been evaluated using the area under the curve (AUC), and experimental results showed that it yielded excellent performance compared to the prior studies with the AUC, ACC, precision (PR), recall (RC), and g-mean (Gm) values of 95.50%, 95.52%, 95.5%, 95.5%, and 92.95%, respectively. Similarly, the result of the t-test also showed the proposed model yielded excellent performance compared to previous studies. It can be concluded that the AdaBoost algorithm improved misclassification and changed the distribution of data loss function in random forests. It indicates that the proposed model effectively deals with imbalanced classes in the village development status classification model. ","PeriodicalId":32468,"journal":{"name":"JOIV International Journal on Informatics Visualization","volume":"56 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-06-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"JOIV International Journal on Informatics Visualization","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.30630/joiv.7.2.989","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q3","JCRName":"Decision Sciences","Score":null,"Total":0}
引用次数: 0
Abstract
There is a significant imbalanced class in the village development index (called IDM - Indeks Desa Membangun) dataset, marked by the number of self-supporting classes more than the disadvantaged class. The traditional classifiers are able to achieve high accuracy (ACC) by training all cases of the majority class but forsaking the minority class, so that possible for the classification results to be biased. In this study, a random under-sampling technique was employed based on k-means cluster (KMC) and a meta-learning approach to improving ACC of the village status classification model. Furthermore, the AdaBoost and Random Forest were used as meta technique and base learner, respectively. The proposed model has been evaluated using the area under the curve (AUC), and experimental results showed that it yielded excellent performance compared to the prior studies with the AUC, ACC, precision (PR), recall (RC), and g-mean (Gm) values of 95.50%, 95.52%, 95.5%, 95.5%, and 92.95%, respectively. Similarly, the result of the t-test also showed the proposed model yielded excellent performance compared to previous studies. It can be concluded that the AdaBoost algorithm improved misclassification and changed the distribution of data loss function in random forests. It indicates that the proposed model effectively deals with imbalanced classes in the village development status classification model.
在村庄发展指数(称为IDM - Indeks Desa Membangun)数据集中,有一个显著的不平衡阶层,其标志是自给自足阶层的数量多于弱势阶层。传统的分类器通过训练多数类的所有案例而放弃少数类的案例来达到较高的准确率(ACC),从而使分类结果有可能出现偏差。本研究采用基于k-均值聚类(KMC)的随机欠采样技术和元学习方法来改进村庄状态分类模型的ACC。此外,AdaBoost和Random Forest分别作为元技术和基础学习器。采用曲线下面积(area under The curve, AUC)对该模型进行了评价,实验结果表明,该模型的AUC、ACC、precision (PR)、recall (RC)和g-mean (Gm)分别为95.50%、95.52%、95.5%、95.5%和92.95%。同样,t检验的结果也表明,与以往的研究相比,所提出的模型取得了优异的性能。可以看出,AdaBoost算法改善了误分类,改变了随机森林中数据丢失函数的分布。结果表明,本文提出的模型有效地处理了村镇发展状况分类模型中的阶层不平衡问题。