CIMLA:模块化和可修改的数据准备、组织和融合基础设施,部分支持上下文感知MMLA解决方案的开发

Shashi Kant Shankar, Adolfo Ruiz-Calleja, L. Prieto, M. Rodríguez-Triana, Pankaj Chejara, Sandesh Tripathi
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摘要

多模态学习分析(MMLA)解决方案旨在通过处理多模态教育数据,为学习情况提供更全面的图景。考虑学习情况的上下文信息有助于向教育利益相关者提供更相关的输出。然而,大多数MMLA解决方案仍处于原型设计阶段,并处理真实MMLA情况的不同维度,涉及多个跨学科利益相关者,如教师、研究人员和开发人员。仍然处于开发生命周期的原型阶段背后的原因之一与软件开发人员在开发上下文感知MMLA解决方案时在不同级别面临的挑战有关。在本文中,我们确定了需求并提出了一个称为CIMLA的数据基础设施。它包括遵循标准数据处理管道的不同数据处理组件,并考虑遵循数据结构的上下文信息。它已经在三个真实的MMLA场景中进行了评估,这些场景涉及不同的跨学科利益相关者,遵循软件架构分析方法。在三种场景中对其适用性进行了分析,并对开发人员进行了访谈,以评估它是否满足功能和非功能需求。结果表明,CIMLA支持模块化开发上下文感知MMLA解决方案,其每个模块都可以在开发其他解决方案时进行必要的修改。将来,可以调查开发人员在定制配置文件以考虑上下文信息方面的当前参与情况。
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CIMLA: A Modular and Modifiable Data Preparation, Organization, and Fusion Infrastructure to Partially Support the Development of Context-aware MMLA Solutions
Multimodal Learning Analytics (MMLA) solutions aim to provide a more holistic picture of a learning situation by processing multimodal educational data. Considering contextual information of a learning situation is known to help in providing more relevant outputs to educational stakeholders. However, most of the MMLA solutions are still in prototyping phase and dealing with different dimensions of an authentic MMLA situation that involve multiple cross-disciplinary stakeholders like teachers, researchers, and developers. One of the reasons behind still being in prototyping phase of the development lifecycle is related to the challenges that software developers face at different levels in developing context-aware MMLA solutions. In this paper, we identify the requirements and propose a data infrastructure called CIMLA. It includes different data processing components following a standard data processing pipeline and considers contextual information following a data structure. It has been evaluated in three authentic MMLA scenarios involving different cross-disciplinary stakeholders following the Software Architecture Analysis Method. Its fitness was analyzed in each of the three scenarios and developers were interviewed to assess whether it meets functional and non-functional requirements. Results showed that CIMLA supports modularity in developing context-aware MMLA solutions and each of its modules can be reused with required modifications in the development of other solutions. In the future, the current involvement of a developer in customizing the configuration file to consider contextual information can be investigated.
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