基于K-Means算法的ICFL程序学生人口统计聚类

R. Andreswari, R. Fauzi, Berlian Maulidya Izzati, Vandha Widartha, Dita Pramesti
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引用次数: 0

摘要

独立校园,自由学习(ICFL)计划是以学生为中心的学习的表现之一。这个项目可以帮助学生充分发挥他们的潜力,让他们追求自己的激情和才能。本研究旨在了解如何根据人口统计数据对参与ICFL项目的学生进行细分。本研究是基于参与国际英语教学项目的学生的问卷调查。本研究采用的方法是输入数据准备、预处理、数据清洗和数据分析。这些信息在被利用和评估之前将被预处理。为了帮助在数据聚类中产生更好的结果,使用K-Means聚类方法,该方法使用Python计算机语言进行处理。基于性别特征、平均绩点(GPA)、大学入学选择、ICFL类别以及参加ICFL的年份或学期,使用K-Means聚类方法对数据进行聚类。这项研究产生了三个集群,每个集群都有其标准。优势性别出现在集群2(100%为雌性)和集群3(100%为雄性)。在集群1中,软件开发是最受学生欢迎的ICFL类别,占67%,而在集群2和3中,设计和分析信息系统最受学生欢迎。最主要的ICFL程序在三个集群中被发现。ICFL -实习项目,至少40%的参与者来自每个集群。预计研究结果将有助于利益相关者评估ICFL计划的实施情况。
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Students Demography Clustering Based on The ICFL Program Using K-Means Algorithm
Independent Campus, Freedom to Learn (ICFL) Program is one of the manifestations of student-centered learning. This program can help students reach their full potential by allowing them to pursue their passions and talents. This study aims to see how the segmentation of students participating in the ICFL program is based on demographic data. This research is based on survey responses from students participating in the ICFL program. The method used in this study is input data preparation, pre-processing, data cleansing, and data analysis. The information will be pre-processed before being utilized and evaluated. To help produce better outcomes in data clustering, the K-Means clustering approach is used, which is processed using the Python computer language. The data is clustered using the K-Means clustering approach based on gender characteristics, Grade Point Average (GPA), university entrance selection, ICFL category, and year or semester when participating in ICFL. This study resulted in three clusters with each of its criteria. The dominant gender is found in clusters 2 (100% female) and 3 (100% male). Software Development was the most popular ICFL category among students in cluster 1, accounting for 67%, while Design and Analysis Information Systems was the most popular in clusters 2 and 3. The most dominant ICFL program is found in three clusters. ICFL - Internship program in which at least 40% of participants come from each cluster. The research results are expected to assist stakeholders in evaluating the implementation of the ICFL program.  
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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