Keen2Act: Activity Recommendation in Online Social Collaborative Platforms

R. Lee, Thong Hoang, R. J. Oentaryo, David Lo
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引用次数: 0

Abstract

Social collaborative platforms such as GitHub and Stack Overflow have been increasingly used to improve work productivity via collaborative efforts. To improve user experiences in these platforms, it is desirable to have a recommender system that can suggest not only items (e.g., a GitHub repository) to a user, but also activities to be performed on the suggested items (e.g., forking a repository). To this end, we propose a new approach dubbed Keen2Act, which decomposes the recommendation problem into two stages: the Keen and Act steps. The Keen step identifies, for a given user, a (sub)set of items in which he/she is likely to be interested. The Act step then recommends to the user which activities to perform on the identified set of items. This decomposition provides a practical approach to tackling complex activity recommendation tasks while producing higher recommendation quality. We evaluate our proposed approach using two real-world datasets and obtain promising results whereby Keen2Act outperforms several baseline models.
Keen2Act:在线社交协作平台的活动推荐
像GitHub和Stack Overflow这样的社交协作平台已经越来越多地用于通过协作来提高工作效率。为了改善这些平台上的用户体验,最好有一个推荐系统,不仅可以向用户推荐项目(例如,GitHub存储库),还可以在建议的项目上执行活动(例如,分叉存储库)。为此,我们提出了一种名为Keen2Act的新方法,它将推荐问题分解为两个阶段:Keen和Act步骤。Keen步骤为给定的用户识别他/她可能感兴趣的一组(子)项目。然后,“行动”步骤向用户推荐在已识别的一组项目上执行哪些活动。这种分解提供了一种实用的方法来处理复杂的活动推荐任务,同时产生更高的推荐质量。我们使用两个真实世界的数据集评估了我们提出的方法,并获得了令人鼓舞的结果,其中Keen2Act优于几个基线模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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