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Metadata for social recommendations: storing, sharing and reusing evaluations of learning resources

机译:社会建议的元数据:存储,共享和重用学习资源的评估

摘要

Social information retrieval systems, such as recommender systems, can benefit greatly from sharable and reusable evaluations of online resources. For example, in distributed repositories with rich collections of learning resources, users can benefit from evaluations, ratings, reviews, annotations, etc. that previous users have provided. Furthermore, sharing these evaluations and annotations can help attain the critical mass of data required for social information retrieval systems to be effective and efficient. This kind of interoperability requires a common framework that can be used to describe the evaluation approach and its results in a reusable manner. This chapter discusses this concept, focusing on the rationale for a reusable and interoperable framework, that can be used to facilitate the representation, management and reuse of results from the evaluation of learning resources. For this purpose, we review a variety of evaluation approaches for learning resources, and study ways in which evaluation results may be characterised, so as to draw requirements for sharable and reusable evaluation metadata. Usage scenarios illustrate how evaluation metadata can be useful in the context of recommender systems for learning resources.
机译:社交信息检索系统(例如推荐系统)可以从可共享和可重复使用的在线资源评估中受益匪浅。例如,在具有丰富学习资源集合的分布式存储库中,用户可以从以前的用户提供的评估,评级,评论,注释等中受益。此外,共享这些评估和注释可以帮助获得有效且高效的社会信息检索系统所需的关键数据量。这种互操作性需要一个通用框架,该框架可用于以可重用的方式描述评估方法及其结果。本章讨论此概念,重点是可重用和可互操作的框架的原理,该框架可用于促进对学习资源评估的结果进行表示,管理和重用。为此,我们回顾了各种学习资源的评估方法,并研究了表征评估结果的方式,从而提出了可共享和可重复使用的评估元数据的要求。使用方案说明了评估元数据如何在推荐系统中用于学习资源。

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