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Enhancing Blended Environments Through Fuzzy Cognitive Mapping of LMS Users' Quality of Interaction: The Rare and Contemporary Dance Paradigms

机译:通过模糊认知映射通过LMS用户互动质量的模糊认知映射增强混合环境:珍稀且当代的舞蹈范式

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摘要

Nowadays, higher education institutions (HEIs) are facing the need of constant monitoring of users' interaction with Learning Management Systems (LMSs), in order to identify key areas for potential improvement. In fact, LMSs under blended (b-) learning mode can efficiently support online learning environments (OLEs) at HEIs. An important challenge would be to provide flexible solutions, where intelligent models could contribute, involving artificial intelligence and incertitude modelling, e.g., via Fuzzy Logic (FL). This study addresses the hypothesis that the structural characteristics of a Fuzzy Cognitive Map (FCM) can efficiently model the way LMS users interact with it, by estimating their Quality of Interaction (QoI) within a b-learning context. This work proposes the FCM-QoI model, consisting of 14 input-one output concepts, dependences and trends, considering one academic year of two dance disciplines (i.e., the Rare and Contemporary Dances) of the LMS Moodle use. The experimental results reveal that the proposed FCM-QoI model can provide concepts interconnection and causal dependencies representation of Moodle LMS users' QoI, helping educators of HEIs to holistically visualize, understand and assess stakeholders' needs. In general, the results presented here could shed light upon designing aspects of educational scenarios, but also to those involved in cultural preservation and exploitation initiatives, such as the i-Treasures project (http://i-treasures.eu/).
机译:如今,高等教育机构(HEIS)正面临着不断监测用户与学习管理系统(LMSS)的互动的必要性,以识别潜在改进的关键领域。事实上,混合下的LMS(B-)学习模式可以在HEIS上有效地支持在线学习环境(OLES)。一个重要的挑战是提供灵活的解决方案,其中智能模型可以贡献,涉及人工智能和行感建模,例如,通过模糊逻辑(FL)。本研究解决了模糊认知地图(FCM)的结构特征可以有效地模拟LMS用户与其交互的结构特征,通过估计B学习背景中的互动质量来互动地模拟。这项工作提出了FCM-Qoi模型,包括14个输入 - 一个输出概念,依赖性和趋势,考虑到了两个舞蹈学科的一个学年(即,罕见和当代舞蹈)的LMS Moodle使用。实验结果表明,建议的FCM-Qoi模型可以提供Moodle LMS用户Qoi的概念互连和因果依赖性,帮助HEIS的教育者全面地看,理解和评估利益相关者的需求。一般而言,这里呈现的结果可以在设计教育情景的方面时揭示,而且可以阐明参与文化保存和开发举措的人,例如I-Mastous项目(http://i-treasures.eu/)。

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