Susan Elias, A. Chandar, K. Krithivasan, S. Raghavan
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引用次数: 0
摘要
提出研究工作的动机是需要一个创新的电子学习系统,可以适应每个人的学习能力。自适应电子学习系统创造了新的机会,同时也有一些需要解决的研究挑战。这种自适应系统的主要需求是需要有效地创建和表示自适应内容。本文提出了一个膜计算模型来演示如何有效地表示和使用适应性内容。刺突神经P系统(SNP)是一种膜计算模型,灵感来自神经元通过刺突进行交流的方式。本文提出了分布式脉冲神经P系统(Distributed spike Neural P System, DSNP),它是现有的分布式脉冲神经P系统的一种变体,可用于表示动态和分布式系统。在课程编写过程中,在时间线上捕获的时间关系可以使用本文提出的算法自动转换为SNP系统。本文还提出了一种从使用snp链表表示的电子课程组合中自动生成DSNP的算法,并通过实验结果证明了所提出模型的效率和可扩展性。
An Adaptive e-Learning Environment Using Distributed Spiking Neural P Systems
The motivation behind the proposed research work is the need for an innovative e-learning system that can adapt to the learning capability of every individual. Adaptive e-learning systems create new opportunities and at the same time have several research challenges that need to be addressed. The primary requirement of such adaptive systems is the need to create and represent adaptable content effectively. This paper presents a membrane computing model to demonstrate how adaptable content can be represented and used efficiently. The Spiking Neural P System (SNP) is a membrane computing model inspired by the way neurons communicate by means of spikes. This paper proposes the Distributed Spiking Neural P System (DSNP), a variant of the existing Distributed P System, that can be used to represent dynamic and distibuted systems. Temporal relations captured on a time line during authoring of the ecourse, can be automatically converted into an SNP system using the algorithm presented in the paper. An algorithm for the automatic generation of the DSNP from the e-course compositions represented using a linked list of SNPs is also presented in the paper along with experimental results to prove the efficiency and scalability of the proposed model.