CLASSIFICATION OF STUDENT SCHOLARSHIP ACCURATE CLASSIFICATION USING THE K NEAREST NEIGHBOR ALGORITHM

  • Bosker Sinaga STMIK Pelita Nusantara
  • Meman Marpaung STMIK Pelita Nusantara
  • Maya Theresia Br Barus STMIK Pelita Nusantara
  • Erlina Laia STMIK Pelita Nusantara
Keywords: data mining, KNN algorithm, scholarship.

Abstract

Providing the right student scholarships will produce graduates who are permanent and reliable. Scholarships are usually given in the form of financial assistance, both education money and even pocket money (living expenses). This research classifies the accuracy of awarding student scholarships, where in the research conducted the number of scholarship recipients was not on target, resulting in the scholarship recipients not being serious about attending lectures and even dropping out of studies. The research method, namely the survey research method, is a research method that is carried out using surveys or data collection through research respondents. The algorithm used in analyzing the data is the KNN algorithm. The purpose of this study was to apply data mining using the KNN algorithm to find out the classification results of the accuracy of awarding student scholarships. The results of this study make a classification of scholarships, namely 19 students are eligible to receive scholarships and 49 students are not eligible to receive scholarships.

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Published
2022-12-30
How to Cite
Sinaga, B., Marpaung, M., Br Barus, M. T., & Laia, E. (2022). CLASSIFICATION OF STUDENT SCHOLARSHIP ACCURATE CLASSIFICATION USING THE K NEAREST NEIGHBOR ALGORITHM. INFOKUM, 10(5), 999-1005. https://doi.org/10.58471/infokum.v10i5.1217