Spatial-Data-Driven Student Characterization: Trajectory Sequence Alignment based on Student Smart Card Transactions

Sungha Ju, Sangyoon Park, Hyoungjoon Lim, S. Yun, J. Heo
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引用次数: 2

Abstract

Analyzing students' characteristic can provide much information for campus planning, education design and student management. This study built students' sequential trajectories based on student smart card transactions and calculate similarity scores for finding relationship between students' trajectories and academic performance. The data used in this study are student smart card transaction data and attendance information of Yonsei university Songdo campus students. Based on this, the trajectory of each student is created into daily context sequence and connected in semester unit. In order to calculate the similarity of one semester trajectory between two students, Needleman-Wunsch Algorithm, which is mainly used for comparison of the DNA nucleotide sequences of two different species, was applied. The similarity score of trajectory sequences for student pair were calculated for 685 students in spring semester. For finding relation with academic performance, authors divided students into two groups; one group with high similarity score for both students in the pair and the other with pair of students with low similarity score. 2-sample T-test was conducted afterward in to determine whether the GPA of these groups were different form the overall distribution of student GPA. As a result, the mean value of GPA of the students with low similarity scores were statistically significantly lower than the overall mean value of GPA. This means that the trajectory sequence of students with lower GPA is less similar than the other students. The results of this study indicate that trajectory information based on spatial data is related to characteristics such as student academic achievement, and it is possible to analyze characteristics of students through spatial trajectory sequence information.
空间数据驱动的学生特征:基于学生智能卡交易的轨迹序列对齐
分析学生的特点可以为校园规划、教育设计和学生管理提供很多信息。本研究以学生智能卡交易为基础,建立学生的顺序轨迹,并计算相似性分数,以寻找学生轨迹与学习成绩的关系。本研究使用的数据为延世大学松岛校区学生智能卡交易数据和出勤信息。在此基础上,每个学生的轨迹被创建为日常语境序列,并以学期为单位连接起来。为了计算两个学生一个学期轨迹的相似度,我们使用了主要用于比较两个不同物种DNA核苷酸序列的Needleman-Wunsch算法。对685名春季学期学生进行轨迹序列相似性评分。为了寻找与学习成绩的关系,作者将学生分为两组;一组两名学生相似度高,另一组两名学生相似度低。随后进行2样本t检验,以确定这些组的GPA是否与学生GPA的总体分布不同。因此,相似分数低的学生的平均GPA值在统计学上显著低于整体平均GPA值。这意味着GPA较低的学生的轨迹序列比其他学生更不相似。研究结果表明,基于空间数据的轨迹信息与学生学习成绩等特征相关,通过空间轨迹序列信息分析学生特征成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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