Intelligent system for college selection with analytical hierarchy process method case study approach

Authors

  • Nurhikmah Department of Informatic Engineering, Universitas Ibnu Sina, Indonesia
  • Muhammad Ropianto Department of Informatic Engineering, Universitas Ibnu Sina, Indonesia
  • Novi Hendri Adi Department of Informatic Engineering, Universitas Ibnu Sina, Indonesia

DOI:

https://doi.org/10.58712/jcim.v2i1.130

Keywords:

Decent work and economic grouwth, Decision science, Data checking, Sequential manner, Development life cycle

Abstract

This research aims to develop an innovative decision support system to assist students of SMK Ibnu Sina in selecting universities in Batam City according to their preferences. In order to make the right decision, prospective students must survey information about Batam City universities. With this information, prospective students can assess universities based on accreditation, registration fees, facilities, convenience, and study programs offered to choose the university that best suits their educational needs. The System Development Life Cycle (SDLC) method with a waterfall model is used as a framework to design an effective web-based information system. Data was collected through literature studies and interviews with counseling teachers to establish essential criteria in the college selection process. Based on the results of this analysis, the developed information system includes features such as criteria weighting using the Analytical Hierarchy Process (AHP) method, alternative evaluation, and college ranking. Thus, this SPK is designed to provide accurate and reliable recommendations, expected to increase students' confidence in making decisions regarding colleges that best suit their needs and goals.

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Published

2024-04-30

How to Cite

Nurhikmah, Ropianto, M. ., & Adi, N. H. (2024). Intelligent system for college selection with analytical hierarchy process method case study approach. Journal of Computer-Based Instructional Media, 2(1), 42–53. https://doi.org/10.58712/jcim.v2i1.130