Big Data Framework Classification for Public E-Governance Using Machine Learning Techniques

Mohammed Altamimi, Maalim A. Aljabery, I. Alshawi
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Abstract

Using Machine Learning (ML) in many fields has shown remarkable results, especially in government data analysis, classification, and prediction. This technology has been applied to the National ID data (Electronic Civil Registry) (ECR). It is used in analyzing this data and creating an e-government project to join the National ID with three government departments (Military, Social Welfare, and Statistics_ Planning). The proposed system works in two parts: Online and Offline at the same time; based on five (ML) algorithms: Support Vector Machine (SVM), Decision Tree (DT), K-Nearest Neighbor (KNN), Random Forest (RF), and Naive Bayes (NB). The system offline part applies the stages of pre-processing and classification to the ECR and then predicts what government departments need in the online part. The system chooses the best classification algorithm, which shows perfect results for each government department when online communication is made between the department and the national ID. According to the simulation results of the proposed system, the accuracy of the classifications is around 100%, 99%, and 100% for the military department by the SVM classifier, the social welfare department by the RF classifier, and the statistics-planning department by the SVM classifier, respectively.
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基于机器学习技术的公共电子政务大数据框架分类
机器学习(ML)在许多领域的应用已经显示出显著的效果,特别是在政府数据分析、分类和预测方面。该技术已应用于国民身份证数据(电子民事登记)(ECR)。它用于分析这些数据,并创建一个电子政务项目,将国民身份证与三个政府部门(军事、社会福利和统计计划)联系起来。本系统分为在线和离线两部分同时工作;基于五种算法:支持向量机(SVM)、决策树(DT)、k近邻(KNN)、随机森林(RF)和朴素贝叶斯(NB)。系统离线部分对ECR进行预处理和分类,然后在在线部分预测政府部门的需求。系统选择最佳的分类算法,使各政府部门与国民身份证进行在线交流时,显示出最完美的结果。根据所提出系统的仿真结果,SVM分类器对军事部门、RF分类器对社会福利部门、SVM分类器对统计规划部门的分类准确率分别在100%、99%、100%左右。
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