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Toward a rapid development of social network-based recommender systems

机译:迈向基于社交网络的推荐系统的快速发展

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摘要

Actions carried out in social networks such as Facebook, Twitter, Foursquare, and the like, can greatly benefit the quality of recommendations provided by recommender systems. Usual interactions on these platforms provide valuable information on user preferences and proximity with other users. However, the use of this information by external recommender systems is still incipient and developers have little support to do it efficiently. In this paper, we introduce a model-driven development framework for recommenders systems based on social networks. The core of this framework is an abstract, social network-independent model of recommender systems, which combines domain-independent concepts of collaborative filtering with basic concepts of social networks that can be exploited for recommendation purposes. From this model, developers can specify the structure and algorithms of domain-specific recommender systems at a high abstraction level. An automatic code generation strategy supports the implementation phase. Experiments show promising results in development-time saving.
机译:在社交网络(如Facebook,Twitter,Foursquare等)中执行的操作可以极大地提高推荐系统提供的推荐质量。这些平台上的通常交互提供了有关用户偏好和与其他用户的接近度的有价值的信息。但是,外部推荐系统对这些信息的使用仍处于初期阶段,开发人员几乎没有支持有效地进行此操作。在本文中,我们介绍了基于社交网络的推荐者系统的模型驱动开发框架。此框架的核心是推荐程序系统的抽象,独立于社交网络的模型,该模型将协作过滤的独立于域的概念与可以用于推荐目的的社交网络的基本概念结合在一起。通过此模型,开发人员可以在较高的抽象级别上指定特定于域的推荐程序系统的结构和算法。自动代码生成策略支持实施阶段。实验表明,在节省开发时间方面有希望的结果。

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