Aditya, Wigananda Firdaus Putra (2026) Pengembangan Model Hibrida Untuk Prediksi Masa Tunggu Lulusan Menggunakan ElasticNet dan LightGBM Studi Kasus Pada Universitas XYZ. Masters thesis, UPN Veteran Jawa Timur.
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Abstract
Graduate waiting time to obtain a first job is an important indicator for higher education institutions. It is commonly used in accreditation assessments and key performance indicators (IKU). This study develops a hybrid stacking model to predict graduate waiting time by combining ElasticNet and LightGBM. The data were drawn from Universitas XYZ’s Tracer Study and academic records for graduates from 2020-2023 (N=493, after data cleaning, the final dataset consisted of N=449 observations. The predictors included time to degree completion, GPA, TOEFL score, SSKM, internship grade (KP), thesis grade (TA), study program, province, gender, job-search duration, and number of job applications. The entire workflow was implemented within a pipeline to reduce the risk of data leakage, incorporating missing-value imputation, numerical feature standardization, ordinal encoding for ordered variables, and one-hot encoding for nominal variables. Hyperparameters were tuned using RandomizedSearchCV. The stacking model was constructed with ElasticNet and LightGBM as base learners and ElasticNet as the meta-learner trained on out-of-fold predictions. Internal evaluation using cross-validation showed that the stacking model achieved the best and most stable performance with mean R²=0.5884, mean RMSE=2.0168, and mean MAE=1.6429. External testing on an independent 2024 graduate cohort (N=62) yielded R²=0.5304 with RMSE=2.5277 and MAE=1.9387, indicating that performance was largely maintained although errors increased for higher waiting-time cases that were relatively rare. Permutation importance highlighted several top features as dominant predictors. This model can be used as an analytical decision-support tool for mapping waiting-time and designing more targeted career service interventions.
| Item Type: | Thesis (Masters) | ||||||||||||
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| Subjects: | Q Science > QA Mathematics > QA75 Electronic computers. Computer science Q Science > QA Mathematics > QA76.87 Neural computers |
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| Divisions: | Faculty of Computer Science > Magister Information Technology | ||||||||||||
| Depositing User: | Wigananda Firdaus | ||||||||||||
| Date Deposited: | 04 Mar 2026 02:54 | ||||||||||||
| Last Modified: | 04 Mar 2026 02:54 | ||||||||||||
| URI: | https://repository.upnjatim.ac.id/id/eprint/49413 |
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