Prediction Of Student Achievement Using Artificial Neural Network And Support Vector Regression At SMK TELKOM Lampung

Susanti, Desi and Triloka, Joko (2024) Prediction Of Student Achievement Using Artificial Neural Network And Support Vector Regression At SMK TELKOM Lampung. UNSPECIFIED thesis, INSTITUT INFORMATIKA DAN BISNIS DARMAJAYA.

[img] Text
cover.pdf

Download (108kB)
[img] Text
PERNYATAAN KEASLIAN LAPORAN PUBLIKASI.pdf

Download (37kB)
[img] Text
perstujuan publikasi.pdf

Download (414kB)
[img] Text
pengesahan publikasi.pdf

Download (470kB)
[img] Text
kata pengantar.pdf

Download (37kB)
[img] Text
Daftar isi.pdf

Download (23kB)
[img] Text
Daftar Tabel.pdf

Download (7kB)
[img] Text
Daftar gambar.pdf

Download (8kB)
[img] Text
Publikasi.pdf

Download (516kB)
[img] Text
lampiran.pdf

Download (1MB)
[img] Text
LoA.pdf

Download (159kB)
[img] Text
cek turnitin.pdf

Download (2MB)
[img] Text
Submission Checklist.pdf

Download (41kB)
[img] Text
REVISION FORM JURNAL INFOTEL.pdf

Download (29kB)
[img] Text
Revision UnderReview.pdf

Download (294kB)
[img] Text
copyright_new_2 (1).pdf

Download (46kB)

Abstract

The analysis of student performance is crucial in vocational schools because it helps identify the challenges students face in preparing themselves for the workforce. By integrating data mining techniques such as Artificial Neural Networks (ANN), educators can enhance their understanding of factors that improve student learning outcomes. An artificial neural network (ANN) is composed of interconnected artificial neurons that can learn from input data and make complex predictions, including academic achievements. The structure and function of the human brain inspire ANN. This study compares the effec- tiveness of the artificial neural network (ANN) method with other methodologies, such as support vector regression (SVR), to predict student achievement at SMK Telkom Lampung. Primary data collected from SMK Telkom Lampung includes 4939 examples with 550 cases, 26 features, and 4 meta-attributes. Performance evaluation involves metrics such as Mean Squared Error (MSE), Root Mean Squared Error (RMSE), Mean Absolute Error (MAE), and coefficient of determination (R2). The coefficient of determination (R2) value of the Neural Network at 0.001 is higher than the R2 value of SVR, which reaches -0.036. Research find- ings indicate that the Artificial Neural Network model slightly outperforms the Support Vector Regression model, with lower prediction error rates and better ability to explain data variability. Keywords: Student Performance, Vocational School, Coefficient Determination, Prediction

Item Type: Thesis (UNSPECIFIED)
Subjects: 000 Karya Umum > 010 Bibliografi
Ilmu Komputer
000 Karya Umum > 070 Jurnalisme, Penerbitan dan Surat Kabar
Divisions: Pasca Sarjana > Magister Teknik Informatika
Depositing User: Desi Susanti
Date Deposited: 13 Sep 2024 01:24
Last Modified: 13 Sep 2024 01:24
URI: http://repo.darmajaya.ac.id/id/eprint/18447

Actions (login required)

View Item View Item