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Exploring technology integration in education using fuzzy representation and feature selection

机译:用模糊表示和特色选择探索教育技术整合

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Digital technology integration in schools and what this means for teaching and learning plays an significant role in shaping the education environment. There has been a growing body of literature addressing students' perceptions towards technology integration. A large amount of student and teacher self-reported questionnaire or survey data therefore has been collected for different modelling purposes. Yet, considerable questions are still remaining due to this huge-volume, diversified and uncertain survey data. This paper demonstrates the use of fuzzy representation and feature selection to discover unique patterns via survey data. More precisely, fuzzy representation is used to quantify survey response and reform response using linguistic expression. Furthermore, a novel feature selection algorithm is applied to identify important features. This proposed algorithm, based on the sparse representation model, selects features that minimize the residual output error iteratively, thus the resulting features have a direct correspondence to the given problem. The efficiency of the proposed work is evaluated using a state-level student survey. The employed dataset (N = 8528) is used to discover unique patterns among computer efficacy, engagement and school engagement. Experimental results show that the proposed algorithm outperforms traditional approaches.
机译:学校数字技术集成以及这对教学和学习的手段在塑造教育环境方面发挥着重要作用。有一个越来越多的文学体系,解决了学生对技术整合的看法。因此,已经收集了大量的学生和教师自我报告的调查问卷或调查数据,以获取不同的建模目的。然而,由于这种巨大,多样化和不确定的调查数据,相当大的问题仍然存在。本文演示了使用模糊表示和特征选择来通过调查数据发现独特的模式。更精确地,模糊表示用于使用语言表达量化调查响应和改革响应。此外,应用了一种新颖的特征选择算法来识别重要特征。这一提出的算法基于稀疏表示模型,选择迭代地最小化残差误差的特征,因此得到的特征与给定的问题直接对应。使用国家级学生调查评估所提出的工作的效率。所雇用的数据集(n = 8528)用于发现计算机疗效,参与和学校订婚之间的独特模式。实验结果表明,该算法优于传统方法。

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