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Relevance Ranking Metrics for Learning Objects

机译:学习对象的相关性排名指标

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摘要

Technologies that solve the scarce availability of learning objects have created the opposite problem: abundance of choice. The solution to that problem is relevance ranking. Unfortunately current techniques used to rank learning objects are not able to present the user with a meaningful ordering of the result list. This work interpret the Information Retrieval concept of Relevance in the context of learning object search and use that interpretation to propose a set of metrics to estimate the Topical, Personal and Situational relevance. These metrics are calculated mainly from usage and contextual information. An exploratory evaluation of the metrics shows that even the simplest ones provide statistically significant improvement in the ranking order over the most common algorithmic relevance metric.
机译:解决学习对象稀缺可用性的技术产生了相反的问题:选择丰富。解决该问题的方法是相关性排名。不幸的是,用于对学习对象进行排名的当前技术不能向用户呈现结果列表的有意义的排序。这项工作在学习对象搜索的上下文中解释了相关性的信息检索概念,并使用该解释提出了一组度量,以评估主题,个人和情境的相关性。这些度量标准主要根据使用情况和上下文信息来计算。对这些指标的探索性评估表明,即使是最简单的指标,也比最常见的算法相关性指标在统计​​排名方面具有统计学上的显着提高。

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