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A new scalable semantic Web system based on Big Data: A use case in the mobile learning

机译:基于大数据的新型可伸缩语义Web系统:移动学习中的用例

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The semantic web allows machines to understand the meaning of data and to make better use of it.. Resource Description Framework (RDF) is the liagna franca of Semantic Web. While Big Data handles the problematic of storing and processing massive data, it still does not provide a support for RDF data. In this paper, we present a new Big Data semantic web comprised of a classical Big Data system with a semantic layer. As a proof of concept of our approach, we use Mobile-learning as a case study. The architecture we propose is composed of two main parts: a knowledge server and an adaptation model. The knowledge server allows trainers and business experts to represent their expertise using business rules and ontology to ensure heterogeneous knowledge. Then, in a mobility environment, the knowledge server makes it possible to take into account the constraints of the environment and the user constraints thanks to the RDF exchange format. The adaptation model based on RDF graphs corresponds to combinatorial optimization algorithms, whose objective is to propose to the learner a relevant combination of Learning Object based on its contextual constraints. Our solution guarantees scalability, and high data availability through the use of the principle of replication. The results obtained in the system evaluation experiments, on a large number of servers show the efficiency, scalability, and robustness of our system if the amount of data processed is very large.
机译:语义Web使机器能够理解数据的含义并更好地利用它。资源描述框架(RDF)是语义Web的通用名称。尽管大数据处理了存储和处理海量数据的问题,但它仍然不提供对RDF数据的支持。在本文中,我们提出了一个新的大数据语义网,它由具有语义层的经典大数据系统组成。为了证明我们的方法,我们将移动学习作为案例研究。我们提出的体系结构由两个主要部分组成:知识服务器和适应模型。知识服务器允许培训人员和业务专家使用业务规则和本体来表示他们的专业知识,以确保异构知识。然后,在移动环境中,由于RDF交换格式,知识服务器可以考虑环境的约束和用户的约束。基于RDF图的适应模型对应于组合优化算法,其目的是根据学习者的上下文约束向学习者提出学习对象的相关组合。我们的解决方案通过使用复制原理来确保可伸缩性和高数据可用性。在大量服务器上的系统评估实验中获得的结果表明,如果处理的数据量非常大,我们的系统将具有效率,可伸缩性和鲁棒性。

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