Resilient Backpropagation Neural Network on Prediction of Poverty Levels in South Sulawesi
DOI:
https://doi.org/10.30812/matrik.v20i1.726Keywords:
Accuracy, Resilient Algorithm, Backpropagation Neural Network, Proverty Levels, PredictionAbstract
Poverty is a topic that continues and is always discussed up to this time, as a benchmark indicator of how the level of welfare and prosperity in the lives of people in a country. Several attempts have been made by the central and regional governments to reduce poverty levels, including “Bantuan Langsung Tunai†(BLT) and the “Program Keluarga Harapan†(PKH). However, poverty reduction in Indonesia is still slowing down, including in South Sulawesi. Based on this, this study aims to predict poverty levels in South Sulawesi. Factors thought to influence poverty levels are the Human Development Index (HDI), the Open Unemployment Rate (TPT), and the Gross Regional Domestic Product (GRDP). The data used are data from 2010 to 2014. The method used is a backpropagation neural network with a resilient algorithm or better known as a resilient backpropagation neural network (RBNN). The results of the prediction of poverty levels using predictors of HDI, TPT, and GRDP showed that the analysis of the RBNN reached its optimum using architecture [3- 9 - 1] and reached convergence at the 81th iteration with an accuracy rate of 95.34%.
Downloads
References
[2] Badan Pusat Statistik, Profil Kemiskinan di Indonesia September 2018. Jakarta: Badan Pusat Statistik, 2019.
[3] Badan Pusat Statistik Provinsi Sulawesi Selatan, Profil Kemiskinan Sulawesi Selatan, September 2018. Makassar: Badan Pusat Statistik Provinsi Sulawesi Selatan, 2019.
[4] N. Zuhdiyaty and D. Kaluge, “Analisis Faktor-Faktor yang Mempengaruhi Kemiskinan di Indonesia Selama Lima Tahun Terakhir (Studi Kasus pada 33 Provinsi),†Jurnal Ilmiah Bisnis dan Ekonomi Asia, vol. 11, no. 2, pp. 27–31, 2017.
[5] Y. C. Pratama, “Analisis Faktor-Faktor yang Mempengaruhi Kemiskinan di Indonesia,†Esensi: Jurnal Bisnis dan Manajemen, vol. 4, no. 2, Sep. 2014.
[6] A. N. Ulfah and S. ’Uyun, “Analisis Kinerja Algoritma Fuzzy C-Means dan K -Means pada Data Kemiskinan,†JATISI (Jurnal Teknik Informatika dan Sistem Informasi), vol. 1, no. 2, pp. 139–148, 2015.
[7] A. Mulyani, “Analisis Neural Network Struktur Backpropagation sebagai Metode Peramalan pada Perhitungan Tingkat Kemiskian di Indonesia,†Techno Nusa Mandiri, vol. 13, no. 1, pp. 9–15, 2016.
[8] S. Mamase and R. S. Sinukun, “Prediksi Tingkat Kemiskinan Provinsi Gorontalo dengan Metode GRNN,†in Seminar Nasional Humaniora & Aplikasi Teknologi Informasi 2018, 2018, pp. 29–32.
[9] L. M. Patnaik and K. Rajan, “Target Detection Through Image Processing and Resilient Propagation Algorithms,†Neurocomputing, vol. 35, no. 1–4, pp. 123–135, Nov. 2000.
[10] A. K. Santra, N. Chakraborty, and S. Sen, “Prediction of Heat Transfer Due to Presence of Copper–water Nanofluid Using Resilient-propagation Neural Network,†International Journal of Thermal Sciences, vol. 48, no. 7, pp. 1311–1318, Jul. 2009.
[11] L. M. Saini, “Peak Load Forecasting Using Bayesian Regularization, Resilient and Adaptive Backpropagation Learning Based Artificial Neural Networks,†Electric Power Systems Research, vol. 78, no. 7, pp. 1302–1310, Jul. 2008.
[12] S. Kumar and B. K. Tripathi, “High-Dimensional Information Processing Through Resilient Propagation in Quaternionic Domain,†Journal of Industrial Information Integration, vol. 11, pp. 41–49, Sep. 2018.
[13] R. P. Satya Hermanto, Suharjito, Diana, and A. Nugroho, “Waiting-Time Estimation in Bank Customer Queues using RPROP Neural Networks,†Procedia Computer Science, vol. 135, pp. 35–42, 2018.
[14] R. Y. Fa’rifah and Z. Busrah, “Backpropagation Neural Network untuk Optimasi Akurasi pada Prediksi Financial Distress Perusahaan,†Jurnal INSTEK (Informatika Sains dan Teknologi), vol. 2, no. 2, pp. 101–110, 2017.
[15] W. Watsuntorn, R. Khanongnuch, W. Chulalaksananukul, E. R. Rene, and P. N. L. Lens, “Resilient Performance of An Anoxic Biotrickling Filter for Hydrogen Sulphide Removal From A Biogas Mimic: Steady, Transient State and Neural Network Evaluation,†Journal of Cleaner Production, vol. 249, p. 119351, Mar. 2020.
 
[16] A. Poole and A. Kotsialos, “Second Order Macroscopic Traffic Flow Model Validation Using Automatic Differentiation with Resilient Backpropagation and Particle Swarm Optimisation Algorithms,†Transportation Research Part C: Emerging Technologies, vol. 71, pp. 356–381, Oct. 2016.
[17] M. Shiblee, B. Chandra, and P. K. Kalra, “Learning of Geometric Mean Neuron Model Using Resilient Propagation Algorithm,†Expert Systems with Applications, vol. 37, no. 12, pp. 7449–7455, Dec. 2010.
Downloads
Published
Issue
Section
How to Cite
Similar Articles
- Muhammad Ibnu Choldun Rachmatullah, The Application of Repeated SMOTE for Multi Class Classification on Imbalanced Data , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 22 No. 1 (2022)
- Donny Kurniawan, Anthony Anggrawan, Hairani Hairani, Graduation Prediction System on Students Using C4.5 Algorithm , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 19 No. 2 (2020)
- Bambang Krismono Triwijoyo, Model Fast Tansfer Learning pada Jaringan Syaraf Tiruan Konvolusional untuk Klasifikasi Gender Berdasarkan Citra Wajah , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 18 No. 2 (2019)
- Melinda Melinda, Zharifah Muthiah, Fitri Arnia, Elizar Elizar, Muhammad Irhmasyah, Image Data Acquisition and Classification of Vannamei Shrimp Cultivation Results Based on Deep Learning , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 23 No. 3 (2024)
- Christofer Satria, Peter Wijaya Sugijanto, Anthony Anggrawan, I Nyoman Yoga Sumadewa, Aprilia Dwi Dayani, Rini Anggriani, Multi-Algorithm Approach to Enhancing Social Assistance Efficiency Through Accurate Poverty Classification , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 24 No. 1 (2024)
- Alya Masitha, Muhammad Kunta Biddinika, Herman Herman, K Value Effect on Accuracy Using the K-NN for Heart Failure Dataset , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 22 No. 3 (2023)
- Ahmad Zein Al Wafi, Febry Putra Rochim, Veda Bezaleel, Investigating Liver Disease Machine Learning Prediction Performancethrough Various Feature Selection Methods , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 24 No. 3 (2025)
- Yarza Aprizal, Rabin Ibnu Zainal, Afriyudi Afriyudi, Perbandingan Metode Backpropagation dan Learning Vector Quantization (LVQ) Dalam Menggali Potensi Mahasiswa Baru di STMIK PalComTech , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 18 No. 2 (2019)
- Dairoh Dairoh, Very Kurnia Bakti, Muhammad Naufal, Neural Network dan Particle Swam Optimization untuk Penunjang Keputusan Antipasi Mahasiswa Pra Lulus Bekerja Sesuai Bidang , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 21 No. 1 (2021)
- Heru Pramono Hadi, Eko Hari Rachmawanto, Rabei Raad Ali, Comparison of DenseNet-121 and MobileNet for Coral Reef Classification , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 23 No. 2 (2024)
You may also start an advanced similarity search for this article.
Most read articles by the same author(s)
- Suwardi Annas, Bobby Poerwanto, Sapriani Sapriani, Muhammad Fahmuddin S, Implementation of K-Means Clustering on Poverty Indicators in Indonesia , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 21 No. 2 (2022)
- Bobby Poerwanto, Baso Ali, Implementasi Algoritma Fuzzy C-Means dalam Mengelompokkan Kecamatan di Tana Luwu Berdasarkan Produktifitas Hasil Perkebunan , MATRIK : Jurnal Manajemen, Teknik Informatika dan Rekayasa Komputer: Vol. 19 No. 1 (2019)