DATA MINING AND FEATURE ANALYSIS OF COLLEGE STUDENT’S CAMPUS NETWORK BEHAVIOR
Keywords:
Data mining, Student Network Behavior; Big DataAbstract
The rise and promotion of big data methods enables teachers to understand the behavior patterns of
students in a timely and accurate manner, especially to find out the groups of students that need to be
focused on in time, and to help promote the student affairs management from empirical qualitative
knowledge to scientific quantitative analysis. This paper applies the clustering method of data mining to
analyze the campus network behavior of 3,245 students in a certain grade of B university, obtains a total
of 23.843 million Internet access data in 4 years. The result shows 4 groups of students with different
characteristics of Internet access, finds 350 students with large network usage. Achievements and other
aspects of performance of these students are affected. This study carried out data mining of student
campus network behavior, which can be used as a practical operation casefor student affairs management
data mining, providing effective data support for the accurate and scientific development of student
affairs management.










