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A Data Mining Model for Students’ Choice of College Major Based on Rough Set Theory

机译:学生&rsquo的数据挖掘模式;基于粗糙集理论的大学专业选择

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Literature is focusing on identifying factors that influence students’ initial choice of major and few have studied students’ involvements after registration in a selected major and this study is one of the few. This study aims to determine the important factors that influence high school students’ choice of major based on data mining techniques. A questionnaire was designed to collect data from students in different universities in Kuwait and in different faculties such as science, literature, medicine and engineering. Rough set theory for feature selection was used to highlight and explain the significant factors related to students’ skills and preferences awareness as well as their experience reflection that are responsible for the development of their satisfaction with the choice of their university majors. The findings of the study revealed that the calculated reducts have a significant influence on the students’ choice of the university and collage major. This research contributes to literature by identifying the relationship between the conditional factors of the reduct (also known as the independent variables) and the classification attribute (also known as the dependent variable). The results of the study give valuable information to the high school students so they know the best majors which suite their skills, preference and experiences. This research also help students not to continually change their major because of the wrong choice of major they made which accordingly lead them to dissatisfaction of their major.
机译:文学专注于确定影响学生和rsquo的因素;初步选择主要和少数人已经研究过学生和rsquo;参与在选定的专业中注册后,这项研究是少数人之一。本研究旨在确定影响高中生和rsquo的重要因素;基于数据挖掘技术的专业选择。调查问卷旨在从科威特和科学,文学,医药和工程等不同大学的学生收集数据。用于特征选择的粗糙集理论用于突出和解释与学生和rsquo相关的重要因素;技能和偏好意识以及他们的经验反思,这些经历对他们对他们的大学专业选择的满意度负责。该研究的调查结果显示,计算的减少对学生和rsquo产生了重大影响;学院选择和拼贴专业。该研究通过识别减析(也称为独立变量)和分类属性(也称为从属变量)之间的关系来贡献文献。研究结果向高中生提供了有价值的信息,以便他们了解套其技能,偏好和经验的最佳专业。这项研究还帮助学生不要不断改变他们的专业,因为他们所做的主要选择,因此认为他们对他们的专业的不满。

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