Using Bi-clustering Algorithm for Analyzing Online Users Activity in a Virtual Campus

F. Xhafa, S. Caballé, L. Barolli, Alberto Molina, Rozeta Miho
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引用次数: 10

Abstract

Data mining algorithms have been proved to be useful for the processing of large data sets in order to extract relevant information and knowledge. Such algorithms are also important for analyzing data collected from the users’ activity users. One family of such data analysis is that of mining of log files of online applications that register the actions of online users during long periods of time. A relevant objective in this case is to study the behavior of online users and feedback the design processes of online applications to provide better usability and adaption to users’ preferences. The context of this work is that of a virtual campus in which thousands of students and tutors carry out the learning and teaching activity using online applications. The information stored in log files of virtual campuses tend to be large, complex and heterogeneous in nature. Hence, their mining requires both efficient and intelligent processing and analysis of user interaction data during long-term learning activities. In this paper, we present abi-clustering algorithm for processing large log data sets from the online daily activity of students in a real virtual campus. Our approach is useful to extract relevant knowledge about user activity such as navigation patterns, activities performed as well as to study time parameters related to such activities. The extracted information can be useful not only to students and tutors to stimulate and improve their experience when interacting with the system but also to the designers and developers of the virtual campus in order to better support the online teaching and learning.
基于双聚类算法的虚拟校园在线用户活动分析
数据挖掘算法已被证明是处理大型数据集以提取相关信息和知识的有用方法。这种算法对于分析从用户活动中收集的数据也很重要。此类数据分析的一类是挖掘在线应用程序的日志文件,这些日志文件记录了在线用户在很长一段时间内的行为。本案例的一个相关目标是研究在线用户的行为,并反馈在线应用程序的设计过程,以提供更好的可用性和适应用户的偏好。这项工作的背景是一个虚拟校园,在这个校园里,成千上万的学生和导师使用在线应用程序进行学习和教学活动。虚拟校园日志文件中存储的信息往往是海量、复杂和异构的。因此,它们的挖掘需要对长期学习活动中的用户交互数据进行高效和智能的处理和分析。在本文中,我们提出了一种用于处理来自真实虚拟校园中学生在线日常活动的大型日志数据集的abi聚类算法。我们的方法对于提取有关用户活动的相关知识(如导航模式、执行的活动)以及研究与此类活动相关的时间参数非常有用。所提取的信息不仅可以激发学生和导师在与系统交互时的体验,而且可以为虚拟校园的设计和开发人员提供有用的信息,以便更好地支持在线教学。
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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