Jurnal TAM (Technology Acceptance Model)
Vol 14, No 2 (2023): Jurnal TAM (Technology Acceptance Model)

COMPARISON OF DECISION TREE AND NAÏVE BAYES ALGORITHMS IN CLASSIFICATION MODELS TO DETERMINE LECTURER PERFORMANCE USING K FOLD CROSS VALIDATION

Nurnawati, Erna Kumalasari (Unknown)
Sholeh, Muhammad (Unknown)
Ariyana, Renna Yanwastika (Unknown)
Almuntaha, Eska (Unknown)



Article Info

Publish Date
30 Dec 2023

Abstract

Lecturer performance is very important to support the progress of higher education. Determination of lecturer performance is based on Tri Dharma activities, including: teaching, research and community service. This study aims to build a model that can predict the predicate of lecturers from the activities carried out. The best model is obtained by comparing the use of two algorithms, namely Decision Tree and Naive Bayes. Data mining methods use the CRISP-DM method, namely business understanding, data understanding, data preparation, modeling, evaluation, and development. Performance testing of training data using K Fold Cross Validation. The modeling results with this performance show that the Decision Tree algorithm has better performance with 94.70%, accuracy, 93.24% precision and 96.33% recall, while Naïve Bayes algorithm has performance with 92.95%, accuracy 90.08% and 96.33%. This shows that modeling using the Decision Tree algorithm can be used as a model in determining lecturer performance.

Copyrights © 2023






Journal Info

Abbrev

JurnalTam

Publisher

Subject

Computer Science & IT Control & Systems Engineering Electrical & Electronics Engineering

Description

Receives articles in technology information and this Journal publishes research articles, literature review articles, case reports and, concept or policy articles, in all areas such as: Geographical Information System, Information systems scale Enterprise, Data base, Data Warehouse, Business ...