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The Use of Time Dimension in Recommender Systems for Learning

机译:在建议系统中使用时间维度进行学习

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When the amount of learning objects is huge, especially in the e-learning context, users could suffer cognitive overload. That way, users cannot find useful items and might feel lost in the environment. Recommender systems are tools that suggest items to users that best match their interests and needs. However, traditional recommender systems are not enough for learning, because this domain needs more personalization for each user profile and context. For this purpose, this work investigates Time-Aware Recommender Systems (Context-aware Recommender Systems that uses time dimension) for learning. Based on a set of categories (defined in previous works) of how time is used in Recommender Systems regardless of their domain, scenarios were defined that help illustrate and explain how each category could be applied in learning domain. As a result, a Recommender System for learning is proposed. It combines Content-Based and Collaborative Filtering approaches in a Hybrid algorithm that considers time in Pre-Filtering and Post-Filtering phases.
机译:当学习对象的数量巨大时,特别是在电子学习背景下,用户可能会遭受认知过载。这样,用户无法找到有用的物品,并且可能会在环境中迷失。推荐系统是建议对用户最符合其兴趣和需求的用户的项目的工具。但是,传统的推荐系统不足以学习,因为该域需要每个用户配置文件和上下文的更个性化。为此,这项工作调查了时间感知的推荐系统(使用时间维度的上下文推荐系统)来学习。基于一组类别(以前的作品中定义)如何在推荐系统中使用时间,无论其域如何,都定义了帮助说明和解释如何在学习域中应用每个类别。结果,提出了一种用于学习的推荐系统。它将基于内容的和协同滤波方法结合在预过滤和过滤后阶段的混合算法中。

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