Using Visualization Algorithms for Discovering Patterns in Groups of Users for Tutoring Multiple Languages through Social Networking

C. Troussas, M. Virvou, K. Espinosa
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引用次数: 18

Abstract

Social networks are addressed to a very large and heterogeneous audience of people. When trying to incorporate an intelligent language learning system in social networks, a problem of user diversity emerges and thus, user clustering based on their characteristics is necessary. In view of this compelling need, this paper concerns the pattern discovery of user clusters in social networks. In this research, we have modeled the Facebook user characteristics that determine the clustering process. An unsupervised clustering algorithm was used so that coherent groups of users with the same learning styles and capabilities are generated. This algorithm clusters users by taking as input their several fundamental characteristics, such as their age, educational level, number of languages spoken and computer knowledge level. The general objective of this data mining process is to extract important information and to gain knowledge from the user data set and transform it into a manageable and intelligible structure with a view to ameliorating the learning process. These experimental results show that the Facebook user characteristics, which were chosen at the clustering process, seem to be significant determinants for the clusters and the whole learning experience of each user.
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利用可视化算法在用户群中发现模式,通过社交网络进行多语言教学
社交网络面向的是一个非常庞大且多样化的受众群体。当试图将智能语言学习系统整合到社交网络中时,会出现用户多样性的问题,因此,基于用户特征的用户聚类是必要的。鉴于这种迫切的需求,本文关注社交网络中用户集群的模式发现。在这项研究中,我们对决定聚类过程的Facebook用户特征进行了建模。使用无监督聚类算法生成具有相同学习风格和能力的连贯用户组。该算法通过将用户的几个基本特征(如年龄、教育程度、使用语言的数量和计算机知识水平)作为输入对用户进行聚类。这种数据挖掘过程的总体目标是从用户数据集中提取重要信息和获取知识,并将其转换为可管理和可理解的结构,以改进学习过程。这些实验结果表明,在聚类过程中选择的Facebook用户特征似乎是聚类和每个用户的整个学习体验的重要决定因素。
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