Derivation of Knowledge Structures for Distributed Learning Objects

L. Stefanutti, D. Albert, Cord Hockemeyer
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引用次数: 14

Abstract

Knowledge space theory (Doignon & Falmagne, 1985; Albert & Lukas, 1999; Doignon & Falmagne, 1999) offers a rigorous and efficient formal framework for the construction, validation, and application of e-assessment and e-learning adaptive systems. This theory is at the basis of some existing e-learning and e-assessment adaptive systems in the U. S. and in Europe. Such systems are based on a fixed and local domain of knowledge, where fixed means that the domain does not change in time, and local refers to the fact that the items are stored and available locally. In this paper we present some theoretical notes on the efficient construction and application of knowledge spaces for knowledge domains that are both dynamic and distributed in space. This goes in the direction of an exploitation of new technologies like the GRID for building the next generation of learning environments.
分布式学习对象的知识结构推导
知识空间理论(Doignon & Falmagne, 1985;Albert & Lukas, 1999;Doignon & Falmagne, 1999)为电子评估和电子学习自适应系统的构建、验证和应用提供了一个严格而有效的正式框架。这一理论是美国和欧洲现有的一些电子学习和电子评估适应系统的基础。这样的系统基于固定和局部的知识领域,其中固定意味着该领域不随时间变化,而局部是指项目在本地存储和可用的事实。本文就动态分布的知识领域如何有效构建和应用知识空间提出了一些理论建议。这是朝着开发新技术的方向发展的,比如建立下一代学习环境的GRID。
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