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Predicting students' academic performance: Levy search of cuckoo-based hybrid classification

机译:预测学生的学术表现:征收杜鹃的混合分类

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摘要

Educational Data Mining (EDM) exists as a novel trend in the Knowledge Discovery in Databases (KDD) and Data Mining (DM) field that concerns in mining valuable patterns and finding out practical knowledge from the educational systems. However, evaluating the educational performance of students is challenging as their academic performance pivots on varied constraints. Hence, this paper intends to predict the educational performance of students based on socio-demographic information. To attain this, performance prediction architecture is introduced with two modules. One module is for handling the big data via MapReduce (MR) framework, whereas the second module is an intelligent module that predicts the performance of the students using intelligent data processing stages. Here, the hybridisation of classifiers like Support Vector Machine (SVM) and Deep Belief Network (DBN) is adopted to get better results. In DBN, Levy Search of Cuckoo (LC) algorithm is adopted for weight computation. Hence, the proposed prediction model SVM-LCDBN is proposed that makes deep connection with the hybrid classifier to attain more accurate output. Moreover, the adopted scheme is compared with conventional algorithms, and the results are attained.
机译:教育数据挖掘(EDM)存在于数据库(KDD)和数据挖掘(DM)领域的知识发现的新趋势,这些领域涉及挖掘宝贵的模式并从教育系统中找出实际知识。然而,评估学生的教育表现是挑战,因为他们的学术表现在各种限制上枢纽。因此,本文旨在预测基于社会人口信息的学生的教育表现。为了实现这一点,用两个模块引入性能预测架构。一个模块用于通过MapReduce(MR)框架处理大数据,而第二个模块是智能模块,其预测学生使用智能数据处理阶段的性能。这里,采用支持向量机(SVM)和深度信仰网络(DBN)等分类器的杂交来获得更好的结果。在DBN中,采用了对杜鹃(LC)算法的征收搜索以进行重量计算。因此,提出了所提出的预测模型SVM-LCDBN,其使混合分级器深连接以获得更准确的输出。此外,将采用的方案与常规算法进行了比较,结果得到了比较。

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