Optimasi Prediksi Kelulusan Tepat Waktu: Studi Perbandingan Algoritma Random Forest dan Algoritma K-NN Berbasis PSO

Indra Irawan, M Riski Qisthiano, Muhammad Syahril, Pamuji M. Jakak
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Abstract

The prediction of on-time graduation for students involves various measurement techniques, including criteria such as majors, class types, and semester grade achievements. These factors play a crucial role in determining whether students will complete their studies within the designated timeframe. In line with this, a model has been developed to forecast the probability of timely graduation. This model leverages the Random Forest and k-Nearest Neighbor (K-NN) algorithms as tools to classify students into appropriate groups. Optimization is carried out using the Particle Swarm Optimizer (PSO) algorithm to enhance prediction accuracy. The data used originates from alumni of various Universities in Palembang.This model utilizes multiple attributes, such as majors, university origins, class types, and semester grade records up to the fourth semester. Other attributes encompass the year of graduation and year of enrollment. Data management and processing are conducted using Rapidminer. Validation is performed by splitting the dataset into training and testing groups through the split validation method. Based on research and testing, the Random Forest algorithm achieves an accuracy of 95.79% with an Area Under Curve (AUC) of 0.991. After optimization with PSO, accuracy increases to 97.89% with an AUC of 0.993. Meanwhile, the k-NN algorithm achieves an accuracy of 93.49% with an AUC of 0.975; after optimization with PSO, accuracy rises to 96.74% with an AUC of 0.986.
及时毕业预测优先权:随机森林算法和PSO K-NN算法比较研究
学生准时毕业的预测涉及到各种测量技术,包括专业、班级类型、学期成绩等标准。这些因素在决定学生是否能在规定的时间内完成学业方面起着至关重要的作用。据此,建立了一个预测及时毕业概率的模型。该模型利用随机森林和k-最近邻(K-NN)算法作为工具,将学生分为适当的组。采用粒子群优化算法(PSO)进行优化,提高预测精度。所使用的数据来自巨港各大学的校友。该模型使用多个属性,如专业、大学出身、班级类型和学期成绩记录,直至第四学期。其他属性包括毕业年份和入学年份。使用Rapidminer进行数据管理和处理。通过分割验证方法将数据集分成训练组和测试组进行验证。经过研究和测试,随机森林算法的准确率为95.79%,曲线下面积(AUC)为0.991。经PSO优化后,准确率提高到97.89%,AUC为0.993。同时,k-NN算法的准确率为93.49%,AUC为0.975;经PSO优化后,准确率达到96.74%,AUC为0.986.
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