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Web metadata extraction and semantic indexing for learning objects extraction

机译:Web元数据提取和语义索引用于学习对象提取

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摘要

Secondary-school teachers are in constant need of finding relevant digital resources to support specific didactic goals. Unfortunately, generic search engines do not allow them to identify learning objects among semistructured candidate educational resources, much less retrieve them by teaching goals. This article describes a multi-strategy approach for semantically guided extraction, indexing and search of educational metadata; it combines machine learning, concept analysis, and corpus-based natural language processing techniques. The overall model was validated by comparing extracted metadata against standard search methods and heuristic-based techniques for Classification Accuracy and Metadata Quality (as evaluated by actual teachers), yielding promising results and showing that this semantically guided metadata extraction can effectively enhance access and use of educational digital material.
机译:中学教师一直需要寻找相关的数字资源来支持特定的教学目标。不幸的是,通用搜索引擎不允许他们在半结构化候选教育资源中识别学习对象,更不用说通过教学目标来检索它们。本文介绍了一种用于语义指导下的教育元数据的提取,索引和搜索的多策略方法;它结合了机器学习,概念分析和基于语料库的自然语言处理技术。通过将提取的元数据与标准搜索方法和基于启发式的分类准确性和元数据质量的技术进行比较(由实际教师评估),验证了整体模型,得出了可喜的结果,并表明这种语义指导的元数据提取可以有效地增强对教育数字资料。

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