Use of Generative Adversarial Networks (GANs) in Educational Technology Research

IF 4.2 Q1 EDUCATION & EDUCATIONAL RESEARCH
Anabel Bethencourt-Aguilar, Dagoberto Castellanos-Nieves, Juan José Sosa-Alonso, Manuel Area-Moreira
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引用次数: 2

Abstract

In the context of Artificial Intelligence, Generative Adversarial Nets (GANs) allow the creation and reproduction of artificial data from real datasets. The aims of this work are to seek to verify the equivalence of synthetic data with real data and to verify the possibilities of GAN in educational research. The research methodology begins with the creation of a survey that collects data related to the self-perceptions of university teachers regarding their digital competence and technological-pedagogical knowledge of the content (TPACK model). Once the original dataset is generated, twenty-nine different synthetic samples are created (with an increasing N) using the COPULA-GAN procedure. Finally, a two-stage cluster analysis is applied to verify the interchangeability of the synthetic samples with the original, in addition to extracting descriptive data of the distribution characteristics, thereby checking the similarity of the qualitative results. In the results, qualitatively very similar cluster structures have been obtained in the 150 tests carried out, with a clear tendency to identify three types of teaching profiles, based on their level of technical-pedagogical knowledge of the content. It is concluded that the use of synthetic samples is an interesting way of improving data quality, both for security and anonymization and for increasing sample sizes.
生成对抗网络(gan)在教育技术研究中的应用
在人工智能的背景下,生成对抗网络(GANs)允许从真实数据集中创建和复制人工数据。这项工作的目的是试图验证合成数据与真实数据的等价性,并验证GAN在教育研究中的可能性。研究方法从创建一项调查开始,该调查收集了与大学教师关于其数字能力和内容的技术教学知识的自我感知相关的数据(TPACK模型)。生成原始数据集后,使用COPULA-GAN过程创建29个不同的合成样本(随着N的增加)。最后,除了提取分布特征的描述性数据外,还应用两阶段聚类分析来验证合成样品与原始样品的互换性,从而检查定性结果的相似性。在结果中,在进行的150次测试中获得了质量上非常相似的集群结构,根据其内容的技术-教学知识水平,明显倾向于确定三种类型的教学概况。结论是,使用合成样本是提高数据质量的一种有趣的方式,无论是安全性和匿名性,还是增加样本量。
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来源期刊
Journal of New Approaches in Educational Research
Journal of New Approaches in Educational Research EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
8.80
自引率
4.40%
发文量
20
审稿时长
4 weeks
期刊介绍: NAER seeks academic articles on educational sciences based on innovative experiences which can contribute the development of the educational sciences in any of their manifestations and provide new approaches to teaching as a response to the deep changes our society is going through.
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