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A behavioral sequence analyzing framework for grouping students in an e-learning system

机译:用于在电子学习系统中对学生进行分组的行为序列分析框架

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Grouping of students benefits the formation of virtual learning communities, and contributes to collaborative learning space and recommendation. However, the existed grouping criteria are mainly limited in the learning portfolios, profiles, and social attributes etc. In this paper, we aim to build a unified framework for grouping students based on the behavioral sequences and further predicting which group a newcomer will be. The sequences are represented as a series of behavioral trajectories. We discuss a shape descriptor to approximately express the geometrical information of trajectories, and then capture the structural, micro, and hybrid similarities. A weighted undirected graph, using the sequence as a node, the relation as an edge, and the similarity as the weight, is constructed, on which we perform an extended spectral clustering algorithm to find fair groups. In the phase of prediction, an indexing and retrieval scheme is proposed to assign a newcomer to the corresponding group. We conduct some preliminary experiments on a real dataset to test the availability of the framework and to determine the parameterized conditions for an optimal grouping. Additionally, we also experiment on the grouping prediction with a synthetic data generator. Our proposed method outperforms the counterparts and makes grouping more meaningful. (C) 2016 Elsevier B.V. All rights reserved.
机译:学生分组有益于虚拟学习社区的形成,并有助于协作学习空间和推荐。但是,现有的分组标准主要限于学习档案,个人资料和社会属性等。在本文中,我们旨在建立一个统一的框架,根据行为顺序对学生进行分组,并进一步预测新移民将是哪个分组。序列表示为一系列行为轨迹。我们讨论一个形状描述符,以近似表示轨迹的几何信息,然后捕获结构,微观和混合相似性。构造了一个以序列为节点,以关系为边缘,以相似度为权重的加权无向图,在该图上执行扩展的光谱聚类算法以找到公平的组。在预测阶段,提出了一种索引和检索方案,以将新来者分配给相应的组。我们在真实的数据集上进行了一些初步的实验,以测试框架的可用性并确定最佳分组的参数化条件。此外,我们还使用合成数据生成器对分组预测进行了实验。我们提出的方法优于同类方法,使分组更有意义。 (C)2016 Elsevier B.V.保留所有权利。

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