利用支持向量机(SVM)方法对七年级学生进行社会科学教育(IPS)成绩评估

Jatim Kristina, Puguh Hiskiawan
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摘要

本研究采用支持向量机(SVM)方法来预测七年级学生在社会科学教育(IPS)方面的表现,并为七年级教师的持续教学计划划定评价范围。模型数据集是为 192 名学生建立的,包括认知和心理运动形成性数据集,数据集涉及三个分类类别(合格、合格和熟练),采用线性和非线性(多项式和高斯)计算算法进行处理。SVM 模型性能评估结果的准确率(ACC)分别为 84%(线性)、75%(多项式)和 90%(高斯)。马修相关系数(MCC)评估表明,线性的有效性能为 47%,多项式和高斯的有效性能分别为 40% 和 20%。总之,学生的表现可以在下一个年级的学习中得到优化,而教师则可以在今后的课堂上复制七年级的学习过程。
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PERFORMANCE EVALUATION OF 7TH GRADE STUDENTS FOR SOCIAL SCIENCE EDUCATION (IPS) UTILISING SUPPORT VECTOR MACHINE (SVM) METHOD
In this study, a Support Vector Machine (SVM) method was utilized to predict the 7th grade performance of social science education (IPS) within the following advanced levels and to delineated an evaluation of ongoing teaching plans for 7th grade teachers. The model dataset was built for 192 students, consisting of cognitive and psychomotor formative The dataset refers to three classification categories (Adequate, Qualified, and Skilled) employed in computational algorithms for processing using linear and non-linear (polynomial and gaussian). The SVM model performance evaluation results obtained a performance accuracy (ACC) of 84% (linear), 75% for polynomials, and gaussians (90%), respectively. The Mathew Correlation Coefficient (MCC) evaluation described a validated performance of 47% for linear, 40% and 20% for polynomial and gaussians, respectively. In conclusion, student performances can follow the learning optimally at the next level, while teachers can replicate the learning process for 7th grade in future classrooms.
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