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A model for learning objects adaptation in light of mobile and context-aware computing

机译:根据移动和上下文感知计算来学习对象自适应的模型

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The growth usage of mobile technologies and devices such as smartphones and tablets, and the almost ubiquitous wireless communication set the stage for the development of novel kinds of applications. One possibility is exploiting this scenario in the field of education, so creating more intelligent, flexible and customizable systems. Mobile devices can be used to help students to learn, considering their learning styles, surroundings, devices and profiles. In this way, the main goal of this article is to propose EduAdapt, an architectural model for the adaptation of learning objects considering device characteristics, learning style and other student's context information. To make this adaptation we used inferences and rules in a proposed ontology, named OntoAdapt. We believe that such ontology can help recommending learning objects to students or adapt these objects according to the context (context-aware computing). We evaluate this proposal in two ways. Firstly, we used scenarios and metrics to assess the ontology. Secondly, we developed a prototype of EduAdapt model and submitted to a class of 20 students with the intention of evaluating the usability and adherence to adapted objects, resulting in a 78 % of acceptance. In brief, the evaluation presented encouraging results, indicating that the proposed model would be useful in the learning process.
机译:移动技术和设备(例如智能手机和平板电脑)的使用不断增长,以及几乎无处不在的无线通信,为开发新型应用程序奠定了基础。一种可能性是在教育领域中利用这种情况,从而创建更加智能,灵活和可定制的系统。考虑到他们的学习风格,环境,设备和个人资料,可以使用移动设备来帮助学生学习。通过这种方式,本文的主要目的是提出EduAdapt,这是一种考虑设备特征,学习风格和其他学生情境信息来适应学习对象的体系结构模型。为了进行这种适应,我们在提议的本体OntoAdapt中使用了推理和规则。我们认为,这样的本体可以帮助向学生推荐学习对象或根据上下文适应这些对象(感知上下文的计算)。我们以两种方式评估该建议。首先,我们使用场景和指标来评估本体。其次,我们开发了EduAdapt模型的原型,并向20名学生进行了培训,目的是评估适用性和对适应对象的遵守情况,从而获得78%的接受率。简而言之,评估提出了令人鼓舞的结果,表明拟议的模型将在学习过程中有用。

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