...
首页> 外文期刊>Indian Journal of Science and Technology >Intelligent socio-economic status prediction system using machine learning models on Rajahmundry A.P., SES dataset
【24h】

Intelligent socio-economic status prediction system using machine learning models on Rajahmundry A.P., SES dataset

机译:智能社会经济地位预测系统利用Rajahmundry A.P的机器学习模型。,SES数据集

获取原文
           

摘要

Background: Developing economic and social systems and assuring the efficiency of economic and social processes is the major task for the government of any country. Predictable machine learning (ML) models are used for analyzing data sets that allow more efficient enterprise management. Now a day, the research on Socio-Economic Status (SES) and Machine Learning (ML) is very crucial to find socio-economic inequalities, and take further actions that are preventions, protections, and suppressions. Objectives: The mainobjective of this research is to understand the Socio Economic System issues and predicting SES levels on particular area like Rajahmundry, AP, India using statistical analysis and machine learning methodologies. Methods: In this, we analyze the data that is collected from Rajahmundry (Rajamahandravaram),Andhra Pradesh, India with 48 feature attributes (dimensions), and one target four class attribute (poor, rich, middle, upper-middle ). The SES levels like poor, rich, middle, and upper-middle classes are predicted by 5 ML algorithms. Findings: In this paper, we conduct the statistical analysis of each attribute, and analyze and compare the performance accuracies using confusion matrix, performance parameter (classification accuracy, Precision,Recall, and F1) values and receive operating characteristic (ROC) under AUC values of five efficient ML algorithms like Na?ve Bayes, Decision Trees (DTs), k-NN, SVM (kernel RBF) and Random Forest (RF). We observed that the RF algorithm showed better results when compared with other algorithms for the Rajahmundry AP SES dataset. The RF algorithm performs 97.82% of classification accuracy (CA) and time is taken for model construction 0.41 seconds. The next superior performed ML model is DTs with 96.67% of CA and 0.16 seconds for model construction. Novelty: Comprehensive analysis indicates that the novel AP SES Dataset with empirical statistical analysis gives the good results and predicts the SES levels with RF model is very effective.
机译:背景:发展经济和社会制度,确保经济和社会流程的效率是任何国家政府的主要任务。可预测的机器学习(ML)模型用于分析允许更高效的企业管理的数据集。现在,一天,社会经济地位(SES)和机器学习(ML)的研究非常重要,以寻求社会经济不等式,并采取涉及预防,保护和抑制的进一步行动。目的:这项研究的主体主管是了解社会经济系统问题,并使用统计分析和机器学习方法更了解Rajahmundry,AP等特定领域的SES水平。方法:在此,我们分析了来自Rajahmundry(Rajamahandravaram),Andhra Pradesh,India的数据,其中包含48个功能属性(尺寸),一个目标四类属性(差,富裕,中高中)。 SES水平如差,丰富,中,高中,5毫升算法预测。调查结果:在本文中,我们对每个属性进行统计分析,并使用混淆矩阵,性能参数(分类准确性,精度,召回和F1)值和接收AUC值的操作特征(ROC)进行分析和比较和比较性能准确性五种有效的ML算法,如Na ve湾,决策树(DTS),K-NN,SVM(核RBF)和随机林(RF)。我们观察到RF算法与Rajahmundry AP SES数据集的其他算法相比,RF算法显示出更好的结果。 RF算法执行97.82%的分类精度(CA),并且时间为0.41秒的模型构造。下一个优越的ML模型是具有96.67%的CA和0.16秒的DTS,用于模型结构。新颖性:综合分析表明,具有经验统计分析的新型AP SES数据集具有良好的结果,并预测RF模型的SES级别非常有效。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号