基于竞争神经网络的学习器分类挖掘

G. Castellano, A. Fanelli, T. Roselli
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引用次数: 19

摘要

解决用户建模问题,这是自适应超媒体系统开发的关键步骤。我们特别关注自适应教育超媒体系统,其中用户是学习者。学习者以从经验数据中提取的类别的形式建模,通过竞争性神经网络对问卷的回答来表示。所提出的网络的关键特征是它能够在学习过程中调整其结构,以便自动显示适当数量的类别。通过两份不同类型的问卷,验证了本文方法的有效性。
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Mining categories of learners by a competitive neural network
Addresses the problem of user modeling, which is a crucial step in the development of adaptive hypermedia systems. In particular, we focus on adaptive educational hypermedia systems, where the users are learners. Learners are modeled in the form of categories that are extracted from empirical data, represented by responses to questionnaires, via a competitive neural network. The key feature of the proposed network is that it is able to adapt its structure during learning so that the appropriate number of categories is automatically revealed. The effectiveness of the proposed approach is shown on two questionnaires of different type.
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