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基于蚁群算法的学生成绩组合预测方法

Combination prediction method of students' performance based on ant colony algorithm.

作者信息

Xu Huan, Kim Min

机构信息

Department of Public Teaching, Hefei Preschool Education College, Hefei, China.

Department of Youth Education and Counseling, Soonchunhyang University, Asan-si, Choongchungnam-do, Korea.

出版信息

PLoS One. 2024 Mar 11;19(3):e0300010. doi: 10.1371/journal.pone.0300010. eCollection 2024.

Abstract

Students' performance is an important factor for the evaluation of teaching quality in colleges. The prediction and analysis of students' performance can guide students' learning in time. Aiming at the low accuracy problem of single model in students' performance prediction, a combination prediction method is put forward based on ant colony algorithm. First, considering the characteristics of students' learning behavior and the characteristics of the models, decision tree (DT), support vector regression (SVR) and BP neural network (BP) are selected to establish three prediction models. Then, an ant colony algorithm (ACO) is proposed to calculate the weight of each model of the combination prediction model. The combination prediction method was compared with the single Machine learning (ML) models and other methods in terms of accuracy and running time. The combination prediction model with mean square error (MSE) of 0.0089 has higher performance than DT with MSE of 0.0326, SVR with MSE of 0.0229 and BP with MSE of 0.0148. To investigate the efficacy of the combination prediction model, other prediction models are used for a comparative study. The combination prediction model with MSE of 0.0089 has higher performance than GS-XGBoost with MSE of 0.0131, PSO-SVR with MSE of 0.0117 and IDA-SVR with MSE of 0.0092. Meanwhile, the running speed of the combination prediction model is also faster than the above three methods.

摘要

学生成绩是高校教学质量评估的重要因素。对学生成绩进行预测和分析能够及时指导学生学习。针对单一模型在学生成绩预测中准确率较低的问题,提出了一种基于蚁群算法的组合预测方法。首先,考虑学生学习行为特点和模型特性,选取决策树(DT)、支持向量回归(SVR)和BP神经网络(BP)建立三个预测模型。然后,提出蚁群算法(ACO)来计算组合预测模型中各模型的权重。将该组合预测方法与单一机器学习(ML)模型及其他方法在准确率和运行时间方面进行比较。均方误差(MSE)为0.0089的组合预测模型比MSE为0.0326的DT、MSE为0.0229的SVR和MSE为0.0148的BP具有更高的性能。为研究组合预测模型的有效性,使用其他预测模型进行对比研究。MSE为0.0089的组合预测模型比MSE为0.0131的GS-XGBoost、MSE为0.0117的PSO-SVR和MSE为0.0092的IDA-SVR具有更高的性能。同时,组合预测模型的运行速度也比上述三种方法更快。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ef08/10927126/eabf19a521b6/pone.0300010.g001.jpg

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