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Time Series Prediction on College Graduation Using KNN Algorithm

机译:基于KNN算法的大学毕业时间序列预测。

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The KNN algorithm is an algorithm for classifying data based on learning data taken from k of its closest neighbors. Classification using the K-Nearest Neighbor (KNN) algorithm can be used to predict whether a student will graduate on time or even be at risk of dropping out. This research implemented KNN algorithm because of its effectiveness in training large and robustness on noisy data. The input used is in the form of student academic data and produces output, namely the accuracy of the KNN algorithm. Data will be divided into time series into four parts, namely 1st year, 2nd year, 3rd year, and 4th year. The time series prediction aims to find out the exact time to make predictions. Testing was conducted using K-Fold Cross Validation by dividing the set of data into several folds, one-fold as test data and the other fold as training data. The results of this test are the accuracy of the predictions of each year experiencing increase and prediction in time series can be used for early detection.
机译:KNN算法是用于基于从其最接近的邻居的k个中获取的学习数据来对数据进行分类的算法。使用K最近邻(KNN)算法进行分类可以用来预测学生是否会按时毕业,甚至有辍学的危险。这项研究之所以实现KNN算法,是因为它在训练大数据和鲁棒数据上的鲁棒性方面非常有效。使用的输入为学生学术数据的形式,并产生输出,即KNN算法的准确性。数据将按时间序列分为四个部分,即1 st 年2 nd 年3 rd 年和第4年。时间序列预测旨在找出进行预测的确切时间。使用K折交叉验证进行测试,方法是将数据集分为几折,一折为测试数据,另一折为训练数据。该测试的结果是每年的预测准确性都在增加,并且可以将时间序列中的预测用于早期检测。

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