PREDIKSI KELULUSAN MAHASISWA TEKNIK INFORMATIKA UNIVERSITAS BANTEN JAYA MENGGUNAKAN ALGORITMA NEURAL NETWORK

Rudianto Rudianto, Raden Kania, Tifani Intan Solihati
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Abstract

The university strives to provide relevant knowledge. One way the government can use it is to measure the quality of the institution by the number of graduates. The higher the pass rate, the higher the quality of training, which can have a positive impact on the certifications awarded by BAN-PT. This allows researchers to see how research is being conducted at the University of Banten Jaya. To predict graduation rates, students can use a type of artificial neural network algorithm commonly known as neural networks. Artificial neural networks are machine learning techniques developed from Multilayer Perceptron (MLP) and designed to process two-dimensional data. Neural network algorithms belong to the type of deep neural network imaging used. There are several types of neural network techniques. That is, the steps of forward and reverse propagation training. Neural networks are similar to MLPs, but in neural networks each neuron is represented in two dimensions, as opposed to MLP, where each neuron has only one dimension. The results of student graduation in a timely manner and is expected to provide information and can provide input to universities in formulating policies for future improvements.
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BANTEN JAYA大学信息工程专业学生毕业典礼预测使用神经网络算法
大学努力提供相关知识。政府可以使用它的一种方法是通过毕业生的数量来衡量学校的质量。通过率越高,培训质量越高,对BAN-PT颁发的证书会产生积极影响。这使得研究人员可以看到万丹查亚大学的研究是如何进行的。为了预测毕业率,学生可以使用一种通常被称为神经网络的人工神经网络算法。人工神经网络是由多层感知器(MLP)发展而来的机器学习技术,旨在处理二维数据。神经网络算法属于深度神经网络成像所使用的类型。有几种类型的神经网络技术。即正向和反向传播训练的步骤。神经网络类似于MLP,但在神经网络中,每个神经元都是二维的,而MLP中,每个神经元只有一个维度。学生毕业的结果有望及时提供信息,并可为大学制定政策提供投入,以便日后改进。
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