PREDIKSI KELULUSAN MAHASISWA MENGGUNAKAN ALGORITMA K-NEAREST NEIGHBOR PADA PROGRAM STUDI SISTEM INFORMASI UNIVERSITAS RIAU
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Date
2022-04
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Elfitra
Abstract
Student graduation on time is one of the assessments or benchmarks in the college
accreditation process. Higher education accreditation assessment is carried out by the
National Accreditation Board for Higher Education. The higher the accreditation value,
the higher the quality of the university. Graduation rate is very important, it is
necessary to determine student graduation. The study focused on predicting student
graduation by data mining using the K-Nearest Neighbor algorithm and the accuracy
rate of algorithms measured using the Confusion Matrix. This studied used data from
students of the Information Systems Study Program of the University of Riau who had
graduated from 2014 to 2016 as many as 148 data. The data was shared using K-FOLD
to predict student graduation with the highest accuracy rate of 100% on K-FOLD 9.
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Keywords
Confusion Matrix, Data Mining, Graduation Prediction, K-Nearest Neighbor
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