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A combination of backpropagation neural network on fuzzy inference system approach in Indonesia scholarship selection process: Case study: “Bidik misi” scholarship selection

机译:反向传播神经网络与模糊推理系统方法相结合的印度尼西亚奖学金选择过程:案例研究:“ Bidik misi”奖学金选择

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“Bidik Misi” (BM) is a scholarship from the Government of Indonesia with two criteria: economic need and academic performance. Main candidate targets are those from low economic families. Due to the large number of potential recipients who desire to continue their study to the university level despite the limited quota, difficulties occur in selecting candidates. This research aims to provide a new selection model by combining Back-Propagation Neural Network (BPNN) on Fuzzy Inferences System (FIS) for the BM scholarship selection process where BPNN is used as classifier to eliminate non-recommended candidates to reduce the system's workload before applying FIS as candidate selector. By considering spearman's correlation coefficients of the input parameters in creating fuzzy framework for BS scholarship selection, the accuracy of the system is superior to previous works. In the future will be useful in making an automated selection system in order to help the committee by reducing their manual labor.
机译:“ Bidik Misi”(BM)是印度尼西亚政府提供的一项奖学金,有两个标准:经济需要和学习成绩。主要候选对象是那些来自低收入家庭的对象。尽管配额有限,但由于仍有大量潜在的接受者希望继续其大学学习,因此在选择候选人时会遇到困难。这项研究旨在通过将反向传播神经网络(BPNN)与模糊推理系统(FIS)结合用于BM奖学金选择过程,从而提供一种新的选择模型,其中BPNN被用作分类器,以消除不推荐的候选人,从而减少了系统的工作量。将FIS用作候选选择器。在建立模糊的学士学位奖学金选择框架时,通过考虑输入参数的斯皮尔曼相关系数,该系统的准确性优于以往的工作。将来在建立自动选择系统方面将很有用,以通过减少委员会的体力劳动来帮助委员会。

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