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Multi-stakeholder News Recommendation Using Hypergraph Learning

机译:多利益相关者新闻推荐使用超图学习

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摘要

Recommender systems are meant to fulfil user preferences. Nevertheless, there are multiple examples where users are not the only stakeholder in a recommendation platform. For instance, in news aggregator websites apart from readers, one can consider magazines (news agencies) or authors as other stakeholders. A multi-stakeholder recommender system generates a ranked list of items taking into account the preferences of multiple stakeholders. In this study, news recommendation is handled as a hypergraph ranking task, where relations between multiple types of objects and stakeholders are modeled in a unified hypergraph. The obtained results indicate that ranking on hypergraphs can be utilized as a natural multi-stakeholder recommender system that is able to adapt recommendations based on the importance of stakeholders.
机译:推荐系统旨在满足用户偏好。 然而,有多个例子,用户不是推荐平台中唯一的利益相关者。 例如,在新闻聚合器网站除了读者,可以将杂志(新闻机构)或作者视为其他利益攸关方。 多利益相关方推荐系统在考虑到多个利益相关者的偏好时,生成排名的项目列表。 在这项研究中,新闻推荐被处理为一个超图排名任务,其中多种类型对象和利益相关者之间的关系在统一的超图中建模。 所获得的结果表明,对超图的排名可以用作自然的多利益相关者推荐制度,可以根据利益攸关方的重要性来适应建议。

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