计算机软件新技术国家重点实验室(南京大学)
南京大学计算机科学与技术系
南京大学软件学院
南京大学人工智能学院
摘要
Due
to the limitation of public school systems, many students pursue private
supplementary tutoring for improving their academic performance. Different from
public schools, the private online education provides diverse courses and
satisfy differentiated demands of the students. Students’ behavior and
performance in online supplementary learning are relevant to not only personal
attributes, but also some factors such as city levels, grades and family
situation. Existing studies mostly rely on panel survey/questionnaire data and
few studied online private tutoring. In this paper, with 11,392 anonymous K-12
students’ 3-year learning data from one of the world’s largest online
extra-curricular education platforms, we uncover students’ online learning
behaviors and infer the impact of students’ home location, family socioeconomic
situation and attended school’s reputation/rank on the students’ private
tutoring course participation and learning outcomes. Further analysis suggests
that such impact may be largely attributed to the inequality of access to
educational resources in different cities and the inequality in family
socioeconomic status. Finally, we study the predictability of students’
performance and behaviors using machine learning algorithms with different
groups of features, showing students’ online learning performance can be
predicted with MAE< 10%.
报告人简介:
Xiaoming
Fu is a Chair Professor of Computer Science at the Institute of Computer
Science, University of Goettingen and leading the Computer Networks (NET)
Research Group. He is a fellow of IET and Academia Europaea,
a senior member and distinguished lecturer of IEEE, a member of ACM and a
member of GI.
He
received his Ph.D. from Tsinghua University in 2000. He was then a research
staff at TU Berlin before joining the faculty at the University of Göttingen
in 2002, where he has been a professor and head of computer networks group
since 2007. His research interests lie in networked systems and applications,
including mobile and cloud computing, social networks and big data analysis.
傅晓明 教授
欧洲科学院院士、IEEE杰出讲师、英国工程技术学会会士
时间:10月20日(星期三)16:00 腾讯会议ID:797 956 653
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