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首页> 外文期刊>Frontiers in Psychology >Chinese College Students Have Higher Anxiety in New Semester of Online Learning During COVID-19: A Machine Learning Approach
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Chinese College Students Have Higher Anxiety in New Semester of Online Learning During COVID-19: A Machine Learning Approach

机译:中国大学生在Covid-19期间在线学习中的新学期焦虑较高:机器学习方法

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The COVID-19 pandemic has caused tremendous loss starting from early this year. This article aims to investigate the change of anxiety severity and prevalence among non-graduating undergraduate students in the new semester of online learning during COVID-19 in China and also to evaluate a machine learning model based on the XGBoost model. A total of 1172 non-graduating undergraduate students aged between 18 and 22 from 34 provincial-level administrative units and 260 cities in China were enrolled onto this study and asked to fill in a sociodemographic questionnaire and the Self-Rating Anxiety Scale (SAS) twice, respectively, during February 15 to 17, 2020, before the new semester started, and March 15 to 17, 2020, 1 month after the new semester based on online learning had started. SPSS 22.0 was used to conduct t -test and single factor analysis. XGBoost models were implemented to predict the anxiety level of students 1 month after the start of the new semester. There were 184 (15.7%, Mean = 58.45, SD = 7.81) and 221 (18.86%, Mean = 57.68, SD = 7.58) students who met the cut-off of 50 and were screened as positive for anxiety, respectively, in the two investigations. The mean SAS scores in the second test was significantly higher than those in the first test ( P 0.05). Significant differences were also found among all males, females, and students majoring in arts and sciences between the two studies ( P 0.05). The results also showed students from Hubei province, where most cases of COVID-19 were confirmed, had a higher percentage of participants meeting the cut-off of being anxious. This article applied machine learning to establish XGBoost models to successfully predict the anxiety level and changes of anxiety levels 4 weeks later based on the SAS scores of the students in the first test. It was concluded that, during COVID-19, Chinese non-graduating undergraduate students showed higher anxiety in the new semester based on online learning than before the new semester started. More students from Hubei province had a different level of anxiety than other provinces. Families, universities, and society as a whole should pay attention to the psychological health of non-graduating undergraduate students and take measures accordingly. It also confirmed that the XGBoost model had better prediction accuracy compared to the traditional multiple stepwise regression model on the anxiety status of university students.
机译:Covid-19大流行引起从今年年初开始的巨大损失。本文旨在调查在中国Covid-19期间在线学习新学期的非毕业本科学生焦虑严重程度和患病率的变化,并根据XGBoost模型评估机器学习模型。来自34个省级行政单位的1172名非毕业本科学生18至24名和中国260个城市均注册了这项研究,并要求填写社会渗透问卷和自评焦虑秤(SAS)两次分别于2020年2月15日至17日,在新学期开始之前,并于3月15日至17日,2020年3月1日,新学期基于在线学习的新学期开始。 SPSS 22.0用于进行T -Test和单因素分析。实施了XGBoost模型,以预测新学期开始后1个月的学生焦虑水平。有184名(15.7%,平均值= 58.45,SD = 7.81)和221名(18.86%,平均值= 57.68,SD = 7.58)学生,他们分别被筛选为焦虑的阳性两次调查。第二种测试中的平均SAS分数明显高于第一次测试中的SAS(P <0.05)。在两项研究之间的所有雄性,女性和学生中也发现了显着的差异(P <0.05)。结果还展示了湖北省的学生,在大多数Covid-19的情况下确认,比例更高的参与者会迎接焦虑。本文应用了机器学习建立XGBoost模型,以成功预测焦虑水平和4周后的焦虑水平的变化,基于第一次测试的学生的SAS分数。据悉,在Covid-19期间,中国非毕业本科学生在新学期基于在线学习之前在新学期开始之前表现出更高的焦虑。来自湖北省的更多学生比其他省份的焦虑程度不同。家庭,大学和社会整体应注意非毕业本科生的心理健康,并采取措施相应。它还证实,与大学生焦虑状况的传统多阶跃回归模型相比,XGBoost模型具有更好的预测准确性。

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