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Improving Scalability of Personalized Recommendation Systems for Enterprise Knowledge Workers

机译:提高企业知识型员工个性化推荐系统的可伸缩性

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Enterprise knowledge workers have been overwhelmed by the growing rate of incoming data in recent years. In this paper, we present a recommendation system with the goal of helping knowledge workers in discovering useful new content. In particular, our system builds personalized user models based on file activities on enterprise network file servers. Our models use novel features that are derived from file metadata and user collaboration. Through extensive evaluation on real-world enterprise data, we demonstrate the effectiveness of our system with high precision and recall values. Unfortunately, our experiments reveal that per-user models are unable to handle heavy workloads. To address this limitation, we propose a novel optimization technique, active feature-based model selection, that predicts the user models that should be applied on each test file. Such a technique can reduce the classification time per file by as much as 23 times without sacrificing accuracy. We also show how this technique can be extended to improve the scalability exponentially at marginal cost of prediction accuracy, e.g., we can gain 169 times faster performance on an average across all shares by sacrificing 4% of F-score.
机译:近年来,企业知识工作者对传入数据的增长感到不知所措。在本文中,我们提出了一个推荐系统,旨在帮助知识工作者发现有用的新内容。特别是,我们的系统基于企业网络文件服务器上的文件活动构建个性化的用户模型。我们的模型使用源自文件元数据和用户协作的新颖功能。通过对真实企业数据的广泛评估,我们以高精度和召回值展示了我们系统的有效性。不幸的是,我们的实验表明,每用户模型无法处理繁重的工作负载。为了解决此限制,我们提出了一种新颖的优化技术,即基于活动特征的模型选择,该技术可以预测应应用于每个测试文件的用户模型。这种技术可以在不牺牲准确性的情况下将每个文件的分类时间减少多达23倍。我们还展示了如何扩展该技术以预测精度的边际成本成倍地提高可扩展性,例如,通过牺牲4%的F分数,我们可以平均平均在所有股票上获得169倍的性能提升。

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