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Analysing the correlation between social network analysis measures and performance of students in social network-based engineering education

机译:在基于社交网络的工程教育中分析社交网络分析措施与学生表现之间的相关性

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Social network-based engineering education (SNEE) is designed and implemented as a model of Education 3.0 paradigm. SNEE represents a new learning methodology, which is based on the concept of social networks and represents an extended model of project-led education. The concept of social networks was applied in the real-life experiment, considering two different dimensions: (1) to organize the education process as a social network-based process; and (2) to analyze the students' interactions in the context of evaluation of the students learning performance. The objective of this paper is to present a new model for students evaluation based on their behavior during the course and its validation in comparison with the traditional model of students' evaluation. The validation of the new evaluation model is made through an analysis of the correlation between social network analysis measures (degree centrality, closeness centrality, betweenness centrality, eigenvector centrality, and average tie strength) and the grades obtained by students (grades for quality of work, grades for volume of work, grades for diversity of work, and final grades) in a social network-based engineering education. The main finding is that the obtained correlation results can be used to make the process of the students' performance evaluation based on students interactions (behavior) analysis, to make the evaluation partially automatic, increasing the objectivity and productivity of teachers and allowing a more scalable process of evaluation. The results also contribute to the behavioural theory of learning performance evaluation. More specific findings related to the correlation analysis are: (1) the more different interactions a student had (degree centrality) and the more frequently the student was between the interaction paths of other students (betweenness centrality), the better was the quality of the work; (2) all five social network measures had a positive and strong correlation with the grade for volume of work and with the final grades; and (3) a student with high average tie strength had a higher grade for diversity of work than those with low ties.
机译:基于社交网络的工程教育(SNEE)被设计和实现为Education 3.0范式的模型。 SNEE代表了一种新的学习方法,该方法基于社交网络的概念,并代表了以项目为主导的教育的扩展模型。社会网络的概念被应用于现实生活中,并考虑了两个不同的方面:(1)将教育过程组织为基于社会网络的过程; (2)在评估学生学习表现的背景下分析学生的互动。本文的目的是提供一个新的学生评估模型,该模型基于他们在课程中的行为并与传统的学生评估模型进行比较。新评估模型的验证是通过分析社交网络分析度量(度中心性,亲密性中心性,中间性中心性,特征向量中心性和平均领带强度)与学生获得的等级(工作质量等级)之间的相关性进行的,工作量等级,工作多样性等级和最终等级)。主要发现是,获得的相关结果可用于基于学生互动(行为)分析进行学生绩效评估的过程,使评估成为部分自动化,从而提高了教师的客观性和生产力,并具有更大的可扩展性评价过程。研究结果也有助于学习绩效评估的行为理论。与相关性分析相关的更具体的发现是:(1)学生进行的互动越多(学位中心),并且学生在其他学生的互动路径之间越频繁(中间中心),则其质量越好。工作; (2)五种社交网络测度均与工作量等级和最终等级呈正相关关系。 (3)平均领带强度高的学生在工作多样性上的得分要高于低领带的学生。

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