Implementation of KMeans and SAW Methods in Determining NonCash Food Aid Recipients

Authors

  • Yunita Yunita Universitas Sriwijaya
  • Rizki Kurniati Universitas Sriwijaya
  • Desty Rodiah Universitas Sriwijaya
  • Allsela Meiriza Universitas Sriwijaya
  • Luh Sri Mulia Eni Universitas Sriwijaya

DOI:

https://doi.org/10.33050/ccit.v16i2.2525

Keywords:

Non Cash Food Assistance, K-Means, Simple Additive Weighting

Abstract

Determination of prospective non cash food assistance recipients, especially in Air Talas village, still uses a manual system so that in the process of determining the recipient there is a risk that the recipient will be inaccurate, so that the village government needs a system that can assist the process of determining prospective non cash food assistance recipients. This study aims to implement the K-Means and SAW methods in determining recipients of non cash food assistance in Air Talas village. The benefits of this research can help the Air Talas village government in determining and recommending prospective non cash food assistance recipients in accordance with established criteria, making it easier to filter, group, and rank appropriate population data according to criteria. In addition, this research is also useful for providing convenience to the community through data collection, clustering, and ranking in a transparent, real, and fast and accurate manner using decision support system software. The K-Means clustering method and the Simple Additive Weighting Ranking method were used in this study with data collection techniques through interviewing sources, in this case the village government, the social section of the community, and through collecting village archive data and relevant journals. The research location is Air Talas village with 316 data used. The results of the study are clustering data as much as 77 data obtained from feasible clusters. The cluster data was then tested using the accuracy value and obtained a value of 80%. Then the research is also in the form of ranking data using clustered data which obtains an accuracy value of 64%.

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Author Biographies

  • Yunita Yunita, Universitas Sriwijaya

    Computer Science Department

  • Rizki Kurniati, Universitas Sriwijaya

    Computer Science Department

  • Desty Rodiah, Universitas Sriwijaya

    Computer Science Department

  • Allsela Meiriza, Universitas Sriwijaya

    Computer Science Department

  • Luh Sri Mulia Eni, Universitas Sriwijaya

    Computer Science Department

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Published

2023-05-08