Recommendation System for Selecting Web Programming Learning Materials for Vocational High School Students using Multi-criteria Recommendation Systems

Lia Wahyuliningtyas, Yunifa Mittachul Arif, Ririen Kusumawati
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Abstract

In the independent curriculum, the learning that is carried out focuses on developing character, student competence and honing interests, talents. So the amount of learning material given to students does not have to be complete or less. Apart from that, the independent curriculum no longer burdens students with achieving a minimum score because assessments no longer use Minimum Completeness Criteria (KKM) scores. This makes it difficult for teachers to determine whether the material that has been explained can be understood because grades are not a benchmark for a student's success. In fact, if the teacher does not know a student's understanding, the teacher will have difficulty continuing to the next material. Implementation of the Multi-Criteria Recommender System (MCRS) can make it easier for teachers to predict whether students can progress to the next material and recommend which modules are suitable for these students. The recommendation system that will be built is in the form of web-based learning media so that students can be more interested and can help teachers improve learning outcomes. The method used is collaborative filtering by comparing adjusted cosine similarity, cosine based similarity and spearman rank order correlation. Based on the implementation of MCRS using the collaborative filtering method, it shows that the results of the recommendation system have a good impact on the teaching and learning process. Based on the 3 algorithms implemented, the best prediction result is cosine based similarity because the MAE value obtained is the lowest, namely 1.19 and the accuracy value is 76%.
利用多标准推荐系统为职业高中学生选择网络编程学习材料的推荐系统
在自主课程中,学习的重点是培养学生的品格、学生的能力和磨练学生的兴趣、特长。因此,给学生的学习材料不一定要全,也不一定要少。除此之外,独立课程不再要求学生达到最低分数,因为评估不再使用最低完整度标准(KKM)分数。这样一来,教师就很难确定学生是否能理解所讲解的材料,因为分数并不是学生成功与否的基准。事实上,如果教师不知道学生的理解程度,就很难继续讲解下一个材料。多标准推荐系统(MCRS)的实施可以让教师更容易预测学生是否能进入下一个教材,并推荐哪些模块适合这些学生。将建立的推荐系统采用网络学习媒体的形式,这样学生可以更感兴趣,也能帮助教师提高学习效果。所使用的方法是协同过滤法,通过比较调整余弦相似度、基于余弦的相似度和矛曼秩序相关性。根据使用协同过滤法实施 MCRS 的结果显示,推荐系统的结果对教学过程产生了良好的影响。在三种算法中,余弦相似度的预测结果最好,因为其 MAE 值最低,为 1.19,准确率为 76%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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