Hybrid Optimization Method Based On Genetic Algorithm For Graduates Students

research
  • 10 Jul
  • 2020

Hybrid Optimization Method Based On Genetic Algorithm For Graduates Students

Graduation is a target that must be achieved by students, especially graduating on
time will be very important. To determine students who graduate on time or cannot be determined before students reach the final semester and hold a trial, many students who fail to graduate on time cause delays and affect the quality assurance of a
tertiary institution. The problem in this research is how to optimize student graduation in order to graduate on time. Therefore, to determine this decision, we conducted a graduation data trial using the SVM method with GA optimization. SVM with accurate learning skills and good generalizations in classifying non-linear data, but SVM is weak in terms of parameter optimization it requires optimization using GA. GA is a method
that has evolved to produce a more optimal data. From the results of processing using SVM and GA, we get more optimal results with 86.57%. Then from these results can help students to graduate on time.
 

Unduhan

 

REFERENSI

Ashok, M. V., and A. Apoorva. 2016. “Data Mining
Approach for Predicting Student and
Institution’s Placement Percentage.” 2016
International Conference on Computation
System and Information Technology for
Sustainable Solutions, CSITSS 2016: 336–40.

Bin, Li, and Yang Min. 2012. “Analysis Model of
Drilling Tool Failure Based on PSO-SVM and
Its Application.” Proceedings - 4th
International Conference on Computational
and Information Sciences, ICCIS 2012 (8):
1307–10.

Devasia, Ms.Tismy, Ms.Vinushree T P, and
Mr.Vinayak Hegde. 2008. “Prediction of
Students Performance Using Educational
Data Mining.” International Journal of
Cognitive Therapy 1(3): 266–79.

Freitas, Frances Anne, and Lora J. Leonard. 2011.
“Maslow’s Hierarchy of Needs and Student
Academic Success.” Teaching and Learning in
Nursing 6(1): 9–13.

Gao, Xiang Ming, Shi Feng Yang, and Yu Hu. 2010.
“Leakage Forecasting for Water Supply
Network Based on GA-SVM Model.”
Proceedings of the 2010 Symposium on
Piezoelectricity, Acoustic Waves and Device
Applications, SPAWDA10: 206–9.

Jiang, Huiyan, Fengzhen Tang, and Xiyue Zhang.
2010. “Liver Cancer Identification Based on
PSO-SVM Model.” 11th International
Conference on Control, Automation, Robotics
and Vision, ICARCV 2010 (December): 2519–
23.

Li, Hua, and YongXin Zhang. 2009. “An Algorithm
of Soft Fault Diagnosis for Analog Circuit
Based on the Optimized SVM by GA.” In 2009
9th International Conference on Electronic
Measurement & Instruments, China: IEEE.

Liu, Han et al. 2019. “Effective Data Classification
via Combining Neural Networks and SVM.”
Proceedings of the 31st Chinese Control and
Decision Conference, CCDC 2019: 4006–9.

Ridwansyah, Ridwansyah, Ganda Wijaya, and
Jajang Jaya Purnama. 2020. Laporan Akhir
Penelitian Mandiri. Jakarta.

Riyanto, Verry, Abdul Hamid, and Ridwansyah.
2019. “Prediction of Student Graduation Time Using the Best Algorithm.” Indonesian
Journal of Artificial Intelligence and Data
Mining 2(2): 1–9.

Suhardjono, Ganda Wijaya, and Abdul Hamid.
2019. “PREDIKSI WAKTU KELULUSAN
MAHASISWA MENGGUNAKAN SVM
BERBASIS PSO.” Bianglala Informatika 7(2):
97–101.

Wang, Gui Ping, Jian Xi Yang, and Ren Li. 2017.
“Imbalanced SVM-Based Anomaly Detection
Algorithm for Imbalanced Training
Datasets.” ETRI Journal 39(5): 621–31.

Ye, Xuehui, Yuxia Li, Ling Tong, and Ling He. 2017.
“Remote Sensing Retrieval of Suspended
Solids in Longquan Lake Based on GA-SVM
Model.” International Geoscience and Remote
Sensing Symposium (IGARSS) 2017-July:
5501–4.

Yu, Ting Chun, and Jui Chung Hung. 2017.
“Forecasting MLB Playoff Teams Using GASVM.”
Proceedings of the 2017 IEEE
International Conference on Applied System
Innovation: Applied System Innovation for
Modern Technology, ICASI 2017: 446–48.