分析k -均值算法对推荐学生择业的影响

Cut Fadhilah, Nunsina Nunsina, Zakial Viki
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引用次数: 0

摘要

【摘要】职业是人在一生中通过培训或工作经验所获得的在某项工作上的进步。职业生涯的各个阶段是从根据你的专业知识了解你感兴趣的工作类型开始的,所以有一个找到你想要的工作的参考。在知道你想要的工作之后,下一步就是保持专注,深化你在该领域的技能,这样你就能掌握你想要的工作。基于这些阶段,需要一个可以推荐职业的系统,该系统可以帮助学生根据他们的学术成绩确定符合他们潜力的职业。在本研究中,使用K-Means算法对问题进行分析。本研究采用HTML、PHP、CSS和XAMPP四种编程语言,设计了面向网络大学生的职业适宜性推荐k-means算法分析系统。本研究使用的方法是统一建模语言(UML)方法。本研究能够使用k-means聚类算法对网络工程师、程序员和软件工程三种职业类型的学生提供职业建议。本研究通过人工计算得出的系统结果的准确率为96.6%。本研究能够使用k-means聚类算法为学生提供网络工程师、程序员和软件工程三种职业类型的职业推荐。本研究通过人工计算得出的系统结果的准确率为96.6%。本研究能够使用k-means聚类算法为学生提供网络工程师、程序员和软件工程三种职业类型的职业推荐。本研究通过人工计算得出的准确率为96.6%,结果在系统中。关键词:职业,K-means,推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ANALYSIS OF K-MEANS ALGORITHM FOR RECOMMENDATIONS STUDENT CAREER DETERMINATION
ABSTRACTCareer is a person's progress in a job that is obtained through training or work experience during his life. The stages in a career start from knowing the type of job you are interested in based on your expertise, so there is a reference for finding the job you want. After knowing the job you want, the next step is to stay focused and deepen your skills in that field, so you can master the job you're looking for. Based on these stages, a system is needed that can recommend careers that can assist students in determining careers that match their potential based on their academic grades. In this study, the K-Means algorithm was used to analyze the problem. This study designed a k-means algorithm analysis system for career suitability recommendations for web-based students using HTML, PHP, CSS and XAMPP programming languages. The method used in this study is the Unified Modeling Language (UML) method. This research is able to provide career recommendations for students using the k-means clustering algorithm for three types of careers, namely Web Engineer, Programmer and Software Engineering. This study produces an accuracy rate of 96.6% with manual calculations with results in the system This research is able to provide career recommendations for students using the k-means clustering algorithm for three types of careers, namely Web Engineer, Programmer and Software Engineering. This study produces an accuracy rate of 96.6% with manual calculations with results in the system This research is able to provide career recommendations for students using the k-means clustering algorithm for three types of careers, namely Web Engineer, Programmer and Software Engineering. This study produces an accuracy rate of 96.6% with manual calculations with results in the systemKeywords: Career, K-means, Recommendations.
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