Ensemble learning techniques to improve the accuracy of predictive model performance in the scholarship selection process

Nurhayati Buslim
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Abstract

Ensemble Learning is an algorithm that searches for the best prediction result based on several classifier solutions which are come from different algorithms. Ensemble learning has better accuracy and performance compared to other algorithms because this method uses several learning algorithms to achieve better predictive solutions. There are a lot of data that the scholarship organizer receives and manages. This makes the process take a lot of time to do checking process and makes it inefficient. Accelerating the process while also maintaining the accuracy of the scholarship selection process can certainly improve the selection performance. In this study, we process student data from UIN Jakarta University as a sample. The model will have 2 base classifiers, namely Support Vector Machine (SVM) and Key Nearest Neighbor (KNN). Each of these algorithms already has quite a good accuracy. Using Ensemble Learning improves the model performance because it has the ability to overcome errors that occur in each data prediction. We can exploit the classification application created using "Streamlit" and will determine whether a student is accepted or rejected in the scholarship selection process. Our model and application can be used by academics as a Decision Support System (DSS) for determining scholarship recipients. This model can also be used as a development for institutions in the academic field.
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集成学习技术在奖学金选择过程中提高预测模型性能的准确性
集成学习是一种基于来自不同算法的多个分类器解来搜索最佳预测结果的算法。与其他算法相比,集成学习具有更好的准确性和性能,因为该方法使用了几种学习算法来获得更好的预测解。奖学金组织者接收和管理的数据很多。这使得流程需要花费大量的时间来进行检查流程,使其效率低下。在保持奖学金选拔过程准确性的同时,加快这一过程,当然可以提高选拔成绩。在本研究中,我们处理来自雅加达大学的学生数据作为样本。该模型将有2个基本分类器,即支持向量机(SVM)和关键最近邻(KNN)。这些算法中的每一种都已经具有相当好的精度。使用集成学习可以提高模型性能,因为它能够克服每个数据预测中出现的错误。我们可以利用使用“Streamlit”创建的分类应用程序,并将确定学生在奖学金选择过程中是被接受还是被拒绝。我们的模型和应用程序可以被学术界用作决定奖学金获得者的决策支持系统(DSS)。这种模式也可以作为学术机构的一种发展。
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