OPTIMIZING K-MEASN ALGORITHM USING PARTICLE SWARM OPTIMIZATION TO GROUP STUDENT LEARNING PROCESSES

Rudi Hariyanto, Mohammad Zoqi Sarwani
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引用次数: 2

Abstract

In the implementation of learning, there are several factors that affect the student learning process, including internal factors, external factors, and learning approach factors. Internal factors (factors within students), for example: the physical and spiritual condition of the student. Namely: physiological aspects (body, eyes and ears) and psychological aspects (student intelligence, student attitudes, student talents, student interests and student motivation). External factors (factors from outside students), for example: environmental conditions around students. Namely: social environment (family, teachers, community, friends) and non-social environment (home, school, equipment, nature). While the student learning approach factors, for example: The learning approach factor, namely the type of student effort which includes the strategies and methods used by students to carry out learning activities of subject matter, which consists of a high approach, medium approach and low approach. So the first focus of this research is to do student clustering based on their learning process using 11 parameters. Second, using the PSO algorithm to get maximum clustering results. The research data were obtained from vocational secondary education institutions in the city of Pasuruan. Where the data is data obtained from the results of school reports and questionnaires as much as 350 student data. Data attributes include environmental features, social features, and related school features to group student data for learning data processing. From the classification results using the PSO method, there are 0.97140754 silhouette values that are obtained because the distance between the data is very close. From these results indicate that the PSO method is able to improve the performance of the k-means clustering method in the classification process of student learning interest.
利用粒子群优化k-measn算法对学生学习过程进行分组
在学习的实施过程中,影响学生学习过程的因素有几个,包括内部因素、外部因素和学习方法因素。内部因素(学生内部因素),例如:学生的身体和精神状况。即:生理方面(身体、眼睛和耳朵)和心理方面(学生智力、学生态度、学生才能、学生兴趣和学生动机)。外部因素(来自外部学生的因素),例如:学生周围的环境条件。即:社会环境(家庭、老师、社区、朋友)和非社会环境(家庭、学校、设备、自然)。而学生的学习方法因素,例如:学习方法因素,即学生的努力类型,包括学生进行主题学习活动所使用的策略和方法,它包括高方法,中等方法和低方法。因此,这项研究的第一个重点是使用11个参数根据学生的学习过程进行聚类。其次,利用粒子群算法获得最大聚类结果。研究数据来自于巴苏鲁市职业中等教育机构。其中的数据是从学校报告和问卷调查中获得的数据,数据多达350名学生。数据属性包括环境特征、社会特征和相关学校特征,对学生数据进行分组,进行学习数据处理。从PSO方法的分类结果来看,由于数据之间的距离非常近,得到的剪影值为0.97140754。从这些结果可以看出,粒子群算法在学生学习兴趣分类过程中能够提高k-means聚类方法的性能。
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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