TY - JOUR TI - Prediksi Mahasiswa Berpotensi Non Aktif Menggunakan Data Mining dalam Decision Tree dan Algoritma C4.5 AU - Nur Yanti Lumban Gaol IS - 2020, Vol. 2, No. 1 PB - SEULANGA SYSTEM PUBLISHER JO - Jurnal Informasi dan Teknologi PY - 2020 SP - 23 EP - 29 UR - https://jidt.org/jidt/article/view/22/19 AB - Non-active students are students who do not attend the lecture process and do not pay tuition administration fees within two semesters or more. Reports on students who are not active will have an impact on the quantity of tertiary institutions. Students who are not registered in non-active students will potentially be expelled or dropped out. For this reason, this research was conducted to explore information on potentially non-active students by applying data mining science with the Decision Tree method and C4.5 algorithm. The tested data were sourced from Triguna Dharma Medan College of Information and Computer Management (STMIK). The results of the study get prediction rules for student data that are potentially non-active with a very good degree of accuracy. So this research can be used to avoid students dropping out unilaterally.