This study analyzes patterns of physical, mental, lifestyle, and personality factors in college students in different periods over the course of a semester and models their relationships with students' academic performance. The data analyzed was collected through smartphones and Fitbit. The use of machine learning models derived from the gathered data was employed to observe the extent of students' behavior associated with their GPA, lifestyle, physical health, mental health, and personality attributes. A mutual agreement method was used in which rather than looking at the accuracy of results, the model parameters and weights of features were used to find common behavioral trends. From the results of the model creation, it was determined that the most significant indicator of academic success defined as a higher GPA, was the places a student spent their time. Lifestyle and personality factors were deemed more significant than mental and physical factors. This study will provide insight into the impact of different factors and the timing of those factors on students' academic performance.
翻译:这项研究分析了各学期不同时期大学生的生理、心理、生活方式和个性因素模式,并模拟了他们与学生学习成绩的关系,通过智能手机和Fitbit收集了所分析的数据,利用从所收集数据中得出的机器学习模型来观察学生与其GPA、生活方式、身体健康、心理健康和个性属性有关的行为程度,采用了一种共同商定的方法,在这种方法中,不是看结果的准确性,而是使用特征的模型参数和分量来寻找共同的行为趋势。根据模型的创建结果,确定学术成就的最重要指标是学生花在GPA上的时间,生活方式和个性因素被认为比精神和生理因素更为重要。这项研究将深入了解不同因素的影响以及这些因素对学生学习成绩的时间安排。