HFIPO-DPNN: A Framework for Predicting the Dropout of Physically Impaired Student from Education

Q2 Social Sciences
Marina. B, A. Senthilrajan
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引用次数: 0

Abstract

Education plays a significant role in individuals’ development and the economic growth of developing countries like India. Dropout of students from their studies is the major concern for any order of education. Some models for predicting the dropout of students are developed with several factors. Many of them lacked consistency as they backed their studies with the academic performance of the students. Especially, for those students who suffered from physical impairment, the dropout depends on several external factors. Hence, this work proposes a novel HFIPO-DPNN to predict the student dropout rooted in the previous semester’s marks. The proposed model enclosed the hybrid firefly and improved particle swarm algorithm to optimize the feature selection that influences the dropout of hearing-impaired students. The optimized feature data are used to predict the dropout with the novel DPNN. The optimized data was split and used for training the DPNN. The testing data is used to evaluate the performance of the proposed framework. The attributes used for predicting the student dropout are Family Size, Subject, Medium of Instruction, and so on. The data must be collected from 250 physically impaired children belonging to ITI institute, Bangalore. The outcome of the proposed framework is evaluated on several metrics. The accuracy of the proposed model is about 99.02%. The HFIPO-DPNN framework can be enhanced for predicting the dropout for students with other disabilities. The optimization showed that factors influencing education other than familial factors are to be considered in the prediction of dropout.
HFIPO-DPNN:一个预测身体残疾学生辍学的框架
教育在印度等发展中国家的个人发展和经济增长中发挥着重要作用。学生中途退学是任何教育秩序的主要问题。一些预测学生辍学的模型是由几个因素组成的。他们中的许多人缺乏一致性,因为他们用学生的学习成绩来支持自己的研究。特别是那些身体有缺陷的学生,辍学取决于几个外部因素。因此,本研究提出了一种新颖的HFIPO-DPNN来预测学生上学期的退学。该模型采用混合萤火虫和改进粒子群算法对影响听障学生辍学的特征选择进行优化。将优化后的特征数据用于预测丢包。将优化后的数据进行分割,用于训练DPNN。测试数据用于评估所提出框架的性能。用于预测学生退学的属性有家庭规模、科目、教学媒介等。数据必须从属于班加罗尔ITI研究所的250名残疾儿童中收集。提出的框架的结果根据几个指标进行评估。该模型的准确率约为99.02%。HFIPO-DPNN框架可用于预测其他残疾学生的退学情况。优化结果表明,在预测辍学时应考虑家庭因素以外的教育影响因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.80
自引率
0.00%
发文量
120
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