维基百科链接结构的大规模分析及其在学习路径构建中的应用

Yiding Song, Chun Hei Leung
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引用次数: 0

摘要

作为历史上最大的百科全书,维基百科代表了前所未有的世界知识的统一。它的内部链接是理解Web上概念和信息组织之间关系的宝贵资源。然而,这样的链接结构没有得到彻底的检查,也几乎没有可视化。在本文中,我们采用图论的方法来研究英文维基百科的链接结构,提供其知识组织的最新快照,包括度分布,强连接组件和断开子图。据我们所知,我们还对整个Wikipedia执行了第一个k-core可视化。我们的结果表明,维基百科是高度连接的,90.05%的文章可以相互访问。与出站链接相比,入站链接可以更好地衡量文章的重要性,并且展示了一种更集中的连接模式。基于我们的观察,我们提出了一个新颖的端到端框架,用于自动构建学习路径,使用维基百科链接递归地筛选和排名理解新主题的先决条件概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-Scale Analysis of Wikipedia’s Link Structure and its Applications in Learning Path Construction
As the largest encyclopedia in history, Wikipedia represents an unprecedented unification of the world’s knowledge. Its internal links are an invaluable resource for understanding the relationships between concepts and information organization on the Web. However, such link structures are not thoroughly examined and barely visualized. In this paper, we take a graph-theoretic approach to investigate the link structure of English Wikipedia, providing an up-to-date snapshot of its knowledge organization, including degree distributions, strongly connected components, and disconnected subgraphs. To the best of our knowledge, we also perform the first k-core visualization over all of Wikipedia. Our results suggest Wikipedia is highly connected, with 90.05% of articles reachable from one another. Inbound links are found to be a better measure of an article’s importance than outbound links and demonstrate a more centralized mode of connection. Based on our observations, we propose a novel, end-to-end framework for automatically constructing learning paths, using Wikipedia links to recursively shortlist and rank prerequisite concepts for understanding new topics.
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