Title :
Analysis and Research of the Campus Network User´s Behavior Based on k-Means Clustering Algorithm
Author :
Quan Shi ; Lu Xu ; Zhenquan Shi ; Yijun Chen ; Yeqin Shao
Author_Institution :
Nantong Univ., Nantong, China
Abstract :
This thesis introduces the status and methods of data mining, aiming at the Nantong University campus network users access data preprocessing analysis, using the K-means clustering algorithm combined with SQL Server 2008 and Visual Studio 2008 business intelligence project function for data mining analysis, and the mining experimental results are analyzed and studied. The research indicates that the campus network users of Internet time has a positiver relevance with the rate of student´s failing grades and a negative correlation with getting schlolarship and CET4(College English Test 4) achievements. What´s more, it not only has a positive effect on school leaders fully understand the behavioral characteristics of students and campus network users of campus network usage, timely feedback and guiding the students to form a good habit of learning, but also plays an important role in improving the campus network bandwidth, performance and application efficiency.
Keywords :
Internet; SQL; computer aided instruction; data mining; pattern clustering; social aspects of automation; Internet; Nantong University campus network; SQL Server; behavioral characteristics; business intelligence project function; campus network bandwidth; campus network user behavior; data mining analysis; data preprocessing analysis; k-means clustering algorithm; visual studio; Automation; Manufacturing; Data Mining; K-means Cluster algorithm; User´s Behavior Analysis;
Conference_Titel :
Digital Manufacturing and Automation (ICDMA), 2013 Fourth International Conference on
Conference_Location :
Qingdao
DOI :
10.1109/ICDMA.2013.46