MOORA Method Analysis For Decision Support System Determining the Best Subsidized Housing in Tanjung Morawa

Authors

  • Preddy Marpaung Universitas Mahkota Tricom Unggul
  • Suci Amalia Sari Universitas Mahkota Tricom Unggul
  • Fadya Larasati Universitas Mahkota Tricom Unggul
  • Sutrisno Arianto Pasaribu Universitas Mahkota Tricom Unggul

DOI:

https://doi.org/10.59934/jaiea.v3i3.702

Keywords:

Best Subsidized Housing, Decision Support System, MOORA Method, Tanjung Morawa

Abstract

Subsidized housing is a government program as an alternative for low-income communities so that the primary needs of the community such as housing are met, especially for people who are already married. One of the areas where subsidized housing is located is the Tanjung Morawa area, Deli Serdang, North Sumatra. However, the problem for the community or employees who want to find a residence to live in the Tanjung Merowa area is the difficulty in determining a subsidized house that suits their wishes, such as comfort, housing price, house model, strategic location. The factor that makes it difficult for people to determine a residential house is because there is no knowledge or information about which subsidized house is the best according to the criteria to be occupied. Therefore, it is necessary to apply a method to analyze to determine the best subsidized house, the Objective Optimization on the basis of Ratio Analysis Simple (MOORA) method is applied to analyze the decision support system to determine the best subsidized house in Tanjung Morawa, where the MOORA method is able to produce the best subsidized house based on the highest value or ranking, where the highest value is ranking 1 alternative 6, Mulia Residence housing.

Downloads

Download data is not yet available.

References

P. Marpaung, D. Candro Parulian Sinaga, B. Sianipar, M. Laia, J. Muda No, and S. Utara, “APPLICATION OF MOORA METHOD IN DETERMINING THE BEST SUBSIDIZED HOUSING IN SEI MENCIRIM REGION OF STMIK PELITA NUSANTARA,”J. Tech. Inform. Chief, vol. 6, no. 2, 2022.

D. Candro, P. Sinaga, B. Sianipar, and P. Marpaung, “Selection of Manager Candidates from Outstanding Employees Using Profile Matching Method at CV. Glofacia Oceanic,” vol. 4, no. September, pp. 643–656, 2020.

… Preddy, P. Marpaung, I. Pebrian, and W. Putri, “Application of Data Mining for Population Density Grouping of Deli Serdang Regency Using K-Means Algorithm,”J. Computer Science. and Sis. Inf., vol. 6, no. 2, pp. 64–70, 2023.

HR Hidayat and W. Wiguna, “TUBERCULOSIS DISEASE DIAGNOSIS APPLICATION USING ANDROID-BASED CERTAINTY FACTOR METHOD,”J. Responsive Ris. Science and Inform., vol. 3, no. 1, 2021, doi: 10.51977/jti.v3i1.331.

IM Sitanggang, “Analysis and Comparison of Sobel and Canny Methods on Edge Detection of Red Sirh Leaf Images,” vol. 3, no. 3, pp. 140–149, 2021.

Y. Zai, Mesran, and E. Buulolo, “Decision Support System for Determining the Best Quality Rambutan Fruit Using the Weighted Product (WP) Method,”Media Inform. Budidarma, 2017.

AN Habibi, KR Sungkono, and R. Sarno, "Determination of Hospital Rank by Using Technique for Order Preference by Similiarity to Ideal Solution (TOPSIS) and Multi Objective Optimization on the Basis of Ratio Analysis (MOORA)," 2019. doi: 10.1109 /ISEMANTIC.2019.8884278.

NWA Ulandari, “Implementation of the MOORA Method in the Bidikmisi Scholarship Selection Process at the STIKOM Bali Institute of Technology and Business,”J. Explore Inform., 2020, doi: 10.30864/eksplora.v10i1.379.

P. Marpaung and H. Pandiangan, "Utilization of the MOORA Method for Recommended Selection of Best Waiters in Hospitality," vol. 4, no. 36, pp. 566–573, 2020, [Online]. Available: https://semanticscholar.org/paper/cdce9b7cfbc266251262df9d1709a8789137d1a5

Downloads

Published

2024-06-15

How to Cite

Marpaung, P., Suci Amalia Sari, Fadya Larasati, & Pasaribu, S. A. (2024). MOORA Method Analysis For Decision Support System Determining the Best Subsidized Housing in Tanjung Morawa. Journal of Artificial Intelligence and Engineering Applications (JAIEA), 3(3), 903–907. https://doi.org/10.59934/jaiea.v3i3.702

Issue

Section

Articles