Prediksi Nilai Mahasiswa Berdasarkan Riwayat Akademik Menggunakan Jaringan Syaraf Tiruan

Main Article Content

Noni Fauzia Rahmadani
Agung Nugroho
Lailan Sofinah Haharap

Abstract

Predicting students' academic performance is crucial in enhancing the quality of education in higher institutions. This study aims to develop a model for predicting student grades based on academic history using Artificial Neural Networks (ANN) with the backpropagation method. Academic data and supporting variables from students are used as inputs in the model, which aims to forecast future academic achievements. In this research, the ANN was structured with a layered architecture consisting of 5 neurons in the input layer, one hidden layer with 7 neurons, and an output layer. The model was trained using the backpropagation algorithm to minimize Mean Square Error (MSE) and improve prediction accuracy. Testing results show that the ANN model achieved convergence with an MSE value of 0.01363 in 68 epochs. Based on these findings, the developed model can be utilized by academic advisors to monitor and predict students' academic progress. Overall, this research contributes to providing an effective data-driven tool for academic mentoring processes, supporting higher education institutions in optimizing students' potential for achieving maximal academic success.

Article Details

How to Cite
Fauzia Rahmadani, N., Nugroho, A. ., & Sofinah Haharap, L. . (2024). Prediksi Nilai Mahasiswa Berdasarkan Riwayat Akademik Menggunakan Jaringan Syaraf Tiruan. Journal of Multidisciplinary Inquiry in Science, Technology and Educational Research, 2(1), 31–40. https://doi.org/10.32672/mister.v2i1.2327
Section
Articles
Author Biographies

Noni Fauzia Rahmadani, Universitas Islam Negeri Sumatera Utara

Program Studi Ilmu Komputer, Fakultas Sains dan Teknologi, Universitas Islam Negeri Sumatera Utara, Medan, Indonesia

Agung Nugroho, Universitas Islam Negeri Sumatera Utara

Program Studi Ilmu Komputer, Fakultas Sains dan Teknologi, Universitas Islam Negeri Sumatera Utara, Medan, Indonesia

Lailan Sofinah Haharap, Universitas Muhammadiyah Sumatera Utara

Program Studi Teknologi Informasi, Fakultas Ilmu Komputer dan Teknologi Informasi, Universitas Muhammadiyah Sumatera Utara, Medan, Indonesia

References

Heryati, A. (2018). Konferensi Nasional Sistem Informasi 2018 STMIK Atma Luhur Pangkalpinang.

Ilmu Matematika Dan Terapan, J., & Maret, |. (2017). PERBANDINGAN METODE JARINGAN SARAF TIRUAN BACKPROPAGATION DAN LEARNING VECTOR QUANTIZATION DALAM DETEKSI HAMA PENGEREK BATANG (Studi Kasus: Kabupaten Seram Bagian Barat Provinsi Maluku) COMPARISON OF ARTIFICIAL NEURAL NETWORK METHODS BACKPROPAGATION AND LEARNING VECTOR QUANTIZATION IN THE DETECTION OF STEM BORER (Case study: Western Seram, Maluku Province) (Vol. 11).

Jiwo Syeto, G., & Fariza, A. (2010). PERAMALAN BEBAN LISTRIK MENGGUNAK AN JARINGAN SARAF TIRUAN METODE KOHONEN.

Kumar, N., Reddy, M. P., & Reddy, M. P. (2011). In vitro Plant Propagation: A Review. In Journal of Forest Science (Vol. 27, Issue 2). https://www.researchgate.net/publication/263638941

Márquez-Vera, C., Romero Morales, C., & Ventura Soto, S. (2013a). Predicting school failure and dropout by using data mining techniques. Revista Iberoamericana de Tecnologias Del Aprendizaje, 8(1), 7–14. https://doi.org/10.1109/RITA.2013.2244695

Márquez-Vera, C., Romero Morales, C., & Ventura Soto, S. (2013b). Predicting school failure and dropout by using data mining techniques. Revista Iberoamericana de Tecnologias Del Aprendizaje, 8(1), 7–14. https://doi.org/10.1109/RITA.2013.2244695

Namoun, A., & Alshanqiti, A. (2021). Predicting student performance using data mining and learning analytics techniques: A systematic literature review. In Applied Sciences (Switzerland) (Vol. 11, Issue 1, pp. 1–28). MDPI AG. https://doi.org/10.3390/app11010237

Nurmila, N., & Sugiharto, A. (n.d.). ALGORITMA BACK PROPAGATION NEURAL NETWORK UNTUK PENGENALAN POLA KARAKTER HURUF JAWA. In Eko Adi Sarwoko Jurnal Masyarakat Informatika.

PENGANTAR_JARINNGAN_SARAF_TIRUAN. (n.d.).

Popelínský, L., Bayer, J., BydžovskBydžovsk, H., Obšívač, T., & Popelínsk, L. (2012). Predicting drop-out from social behaviour of students. https://www.researchgate.net/publication/266592342

Ribeiro De Carvalho Martinho, V., Roberto Minussi, C., C Martinho, V. R., Nunes, C., & Minussi, C. R. (n.d.). Prediction of school dropout risk group using Neural Network A New Method for Prediction of School Dropout Risk Group Using Neural Network Fuzzy ARTMAP. https://www.researchgate.net/publication/261488766

Rizmayanti, A. I., Hidayati, N., Nugraha, F. S., & Gata, W. (2021). 9~18 Diterima Februari 10. JURNAL SWABUMI, 9(1), 2021.

Zola, F., Nurcahyo, G. W., & Santony, J. (2018). JARINGAN SYARAF TIRUAN MENGGUNAKAN ALGORITMA BACKPROPAGATION UNTUK MEMPREDIKSI PRESTASI SISWA. 1(1).