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Measurement of the appropriateness in career selection of the high school students by using data mining algorithms: A case study

机译:利用数据挖掘算法测量高中生择业的适宜性:一个案例研究

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Less than optimal choice of the university department is one of the serious problems Turkish high school students have been suffering. There are a number of potential factors affecting the student's choice of her future profession. Some of these have received attention in the literature, but such studies do not always involve an investigation of the relationship between the factors analyzed and subsequent levels of academic achievement. The present study examines the relationship between the level of academic achievement and the students' abilities, interests and expectations, by using different data mining methods and classifiers, as a preliminary work to develop a system that will guide the student to selecting a career that will be a better match for her in the future. C4.5, SVM, Naive Bayes and MLP algorithms are used for the analysis; 10-fold cross validation and train-test validation are used as models to evaluate the classifiers results. The student feature set is obtained through questionnaires and psychometric tests. The questionnaire and the psychometric test were applied to 210 and 52 students respectively, from the Computer Engineering Department at Cumhuriyet University. The class was labeled either “successful” or “unsuccessful” with reference to the grades received by each student in computer engineering courses. The comparisons of various data mining algorithms, different data set results, and models used are presented and discussed.
机译:对大学系的选择不是最佳选择,这是土耳其高中学生遭受的严重问题之一。有许多潜在因素会影响学生对未来职业的选择。其中一些已在文献中受到关注,但此类研究并不总是涉及对所分析因素与随后学业水平之间关系的调查。本研究通过使用不同的数据挖掘方法和分类器,研究了学业成就水平与学生的能力,兴趣和期望之间的关系,以此作为开发系统的初步工作,该系统将指导学生选择能够胜任的职业。将来会更好地适合她。使用C4.5,SVM,朴素贝叶斯和MLP算法进行分析; 10倍交叉验证和训练测试验证用作评估分类器结果的模型。学生特征集是通过问卷调查和心理测验获得的。问卷和心理测验分别应用于Cumhuriyet大学计算机工程系的210名和52名学生。参照每个学生在计算机工程课程中获得的成绩,将班级标记为“成功”或“不成功”。提出并讨论了各种数据挖掘算法,不同数据集结果和所用模型的比较。

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