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Datasets for Context-Aware Recommender Systems: Current Context and Possible Directions

机译:数据集用于上下文知识推荐系统:当前上下文和可能的方向

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Recommender systems alleviate the overload experienced by users when they have to choose among a large set of options. They are interesting both from a commercial point of view, to propose items to potential customers who may find them relevant, as well as from the point of view of end users, who will be more satisfied if they can find what they need in a short time and without having to navigate and process a large amount of data. Popular recommenders are those used by companies such as Amazon, Netflix or Pandora, to cite a few examples. It has been stated that context data could be exploited in order to provide more relevant recommendations to mobile users. Based on this idea, context-aware recommender systems have attracted significant research attention in the last years. However, in this position paper, we argue that the number of available datasets with context data is scarce and that even those datasets that incorporate context data are usually too sparse. Moreover, existing datasets focus on specific use cases that may not correspond to the one we need to consider for evaluation. Therefore, we analyze possible alternative and future directions that could be followed to mitigate this data availability problem.
机译:推荐系统缓解用户在一系列选项中选择用户的过载。他们从商业角度来看都很有趣,向潜在客户提出可能会发现它们相关的潜在客户,以及从最终用户的角度来看,如果他们能够在短短内找到他们所需要的东西会更加满意时间且不必导航和处理大量数据。热门推荐人是亚马逊,Netflix或Pandora等公司使用的推荐人,以引用一些例子。已经说明可以利用上下文数据,以便向移动用户提供更相关的建议。基于这个想法,背景知识的推荐系统在过去几年中引起了显着的研究。但是,在此位置纸张中,我们认为具有上下文数据的可用数据集的数量是稀缺的,并且即使包含上下文数据的数据集通常也太稀疏。此外,现有的数据集重点关注可能与我们需要考虑进行评估所需的特定用例。因此,我们分析可能遵循的替代和未来方向,以减轻这种数据可用性问题。

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