ARDP:缺失一维学术成果数据集的简化机器学习预测器

Q3 Economics, Econometrics and Finance
O. Folorunso, O. Akinyede, K. Agbele
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引用次数: 0

摘要

我们提出了一个学习成绩数据集(PARD)的机器学习预测器,用于基于卡方期望计算、位置聚类、相对残差渐进逼近和采样群体中数据的位置平均值的缺失学术成绩。学术成果数据集是源自学术机构成果存储库的数据。这是一种专门为预测缺失的学术成绩而设计的技术。由于数据挖掘的全部本质是获取有用的信息并获得对数据集的知识驱动的见解,因此PARD将数据浏览器置于这个有利的角度。PARD承诺比目前在文献中获得的更快地解决缺失的学术结果数据集问题。该预测器是使用Python实现的,所获得的结果表明,它可以对采样情况进行至少高达93.6%的平均准确率预测。结果表明,PARD在为缺失学术成绩数据集的预测问题提供更好的解决方案方面显示出更高的精度趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ARDP: SIMPLIFIED MACHINE LEARNING PREDICTOR FOR MISSING UNIDIMENSIONAL ACADEMIC RESULTS DATASET
We present a machine learning predictor for academic results datasets (PARD), for missing academic results based on chi-squared expected calculation, positional clustering, progressive approximation of relative residuals, and positional averages of the data in a sampled population. Academic results datasets are data originating from academic institutions’ results repositories. It is a technique designed specifically for predicting missing academic results. Since the whole essence of data mining is to elicit useful information and gain knowledge-driven insights into datasets, PARD positions data explorer at this advantageous perspective. PARD promises to solve missing academic results dataset problems more quickly over and above what currently obtains in literatures. The predictor was implemented using Python, and the results obtained show that it is admissible in a minimum of up to 93.6 average percent accurate predictions of the sampled cases. The results demonstrate that PARD shows a tendency toward greater precision in providing the better solution to the problems of predictions of missing academic results datasets in universities.
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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
8 weeks
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