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Examining mobile learning trends 2003–2008: a categorical meta-trend analysis using text mining techniques

机译:研究2003-2008年的移动学习趋势:使用文本挖掘技术的分类元趋势分析

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摘要

This study investigated the longitudinal trends of academic articles in Mobile Learning (ML) using text mining techniques. One hundred and nineteen (119) refereed journal articles and proceedings papers from the SCI/SSCI database were retrieved and analyzed. The taxonomies of ML publications were grouped into twelve clusters (topics) and four domains, based on abstract analysis using text mining. Results include basic bibliometric statistics, trends in frequency of each topic over time, predominance in each topic by country, and preferences for each topic by journal. Key findings include the following: (a) ML articles increased from 8 in 2003 to 36 in 2008; (b) the most popular domain in current ML is Effectiveness, Evaluation, and Personalized Systems; (c) Taiwan is most prolific in five of the twelve ML clusters; (d) ML research is at the Early Adopters stage; and (e) studies in strategies and framework will likely produce a bigger share of publication in the field of ML.
机译:本研究使用文本挖掘技术调查了移动学习(ML)中学术文章的纵向趋势。检索并分析了来自SCI / SSCI数据库的119篇参考期刊文章和议事论文。在使用文本挖掘进行抽象分析的基础上,ML出版物的分类法分为十二个类(主题)和四个域。结果包括基本的文献计量统计,每个主题的频率随时间变化的趋势,每个主题在各个国家中的占主导地位以及每个主题在期刊中的偏好。主要发现包括以下几个方面:(a)ML文章从2003年的8条增加到2008年的36条; (b)当前机器学习中最受欢迎的领域是有效性,评估和个性化系统; (c)在十二个最大产阶级集群中的五个中,台湾产多产; (d)机器学习研究处于早期采用者阶段; (e)策略和框架方面的研究可能会在ML领域产生更大的出版物份额。

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