{"title":"Text mining analysis of factors related to employment anxiety disorders among science and engineering students","authors":"Yu Chang","doi":"10.1017/s1092852923002821","DOIUrl":null,"url":null,"abstract":"Background In recent years, the issue of employment anxiety disorder among science and engineering college students has become increasingly prominent. The study analyzed the relevant factors of employment anxiety disorder among science and engineering students through text mining methods. Subjects and Methods The study selected students from a certain university of science and engineering as the research subjects and divided them into anxiety group and non-anxiety group. Social media data was used for text mining to identify factors related to employment anxiety disorder among science and engineering students. The statistical software SPSS23.0 is used to analyze data and evaluate the correlation of factors using methods such as t-tests or correlation coefficients. Results By analyzing social media texts of science and engineering students, research has identified several factors related to employment anxiety. In the anxiety group, the score of employment pressure was significantly higher than that of the non-anxiety group (M=4.58 in the anxiety group, M=3.26 in the non-anxiety group, P <0.001), Score of career uncertainty (anxiety group M=3.92, non-anxiety group M=2.95, P <0.001), competitive pressure (anxiety group M=4.27, non-anxiety group M=3.18, P <0.001), and career development opportunities (anxiety group M=2.68, non-anxiety group M=3.52, P <0.001). The results showed significant high scores in the anxiety group. Conclusions The research provides valuable information for universities and related institutions to develop targeted coping measures and psychological support, thereby reducing the employment anxiety disorder of science and engineering students and promoting their career development.","PeriodicalId":10505,"journal":{"name":"CNS Spectrums","volume":null,"pages":null},"PeriodicalIF":3.4000,"publicationDate":"2023-10-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"CNS Spectrums","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1017/s1092852923002821","RegionNum":3,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"CLINICAL NEUROLOGY","Score":null,"Total":0}
引用次数: 0
Abstract
Background In recent years, the issue of employment anxiety disorder among science and engineering college students has become increasingly prominent. The study analyzed the relevant factors of employment anxiety disorder among science and engineering students through text mining methods. Subjects and Methods The study selected students from a certain university of science and engineering as the research subjects and divided them into anxiety group and non-anxiety group. Social media data was used for text mining to identify factors related to employment anxiety disorder among science and engineering students. The statistical software SPSS23.0 is used to analyze data and evaluate the correlation of factors using methods such as t-tests or correlation coefficients. Results By analyzing social media texts of science and engineering students, research has identified several factors related to employment anxiety. In the anxiety group, the score of employment pressure was significantly higher than that of the non-anxiety group (M=4.58 in the anxiety group, M=3.26 in the non-anxiety group, P <0.001), Score of career uncertainty (anxiety group M=3.92, non-anxiety group M=2.95, P <0.001), competitive pressure (anxiety group M=4.27, non-anxiety group M=3.18, P <0.001), and career development opportunities (anxiety group M=2.68, non-anxiety group M=3.52, P <0.001). The results showed significant high scores in the anxiety group. Conclusions The research provides valuable information for universities and related institutions to develop targeted coping measures and psychological support, thereby reducing the employment anxiety disorder of science and engineering students and promoting their career development.
近年来,理工科大学生就业焦虑障碍问题日益突出。本研究采用文本挖掘的方法对理工科学生就业焦虑障碍的相关因素进行分析。研究对象与方法选择某理工科大学的学生作为研究对象,将其分为焦虑组和非焦虑组。社交媒体数据被用于文本挖掘,以确定与理工科学生就业焦虑障碍相关的因素。采用统计软件SPSS23.0对数据进行分析,采用t检验或相关系数等方法评价各因素的相关性。通过分析理工科学生的社交媒体文本,研究发现了与就业焦虑相关的几个因素。焦虑组的就业压力得分显著高于非焦虑组(焦虑组M=4.58,非焦虑组M=3.26, P <0.001)、职业不确定性得分(焦虑组M=3.92,非焦虑组M=2.95, P <0.001)、竞争压力得分(焦虑组M=4.27,非焦虑组M=3.18, P <0.001)、职业发展机会得分(焦虑组M=2.68,非焦虑组M=3.52, P <0.001)。结果显示,焦虑组得分明显较高。结论本研究为高校及相关机构制定有针对性的应对措施和心理支持提供了有价值的信息,从而减少理工科学生的就业焦虑障碍,促进其职业发展。
期刊介绍:
CNS Spectrums covers all aspects of the clinical neurosciences, neurotherapeutics, and neuropsychopharmacology, particularly those pertinent to the clinician and clinical investigator. The journal features focused, in-depth reviews, perspectives, and original research articles. New therapeutics of all types in psychiatry, mental health, and neurology are emphasized, especially first in man studies, proof of concept studies, and translational basic neuroscience studies. Subject coverage spans the full spectrum of neuropsychiatry, focusing on those crossing traditional boundaries between neurology and psychiatry.