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Hybrid Recommendation in Heterogeneous Networks

机译:异构网络中的混合推荐

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摘要

The social web is characterized by a wide variety of connections between individuals and entities. A challenge for recommendation is to represent and synthesize all useful aspects of a user's profile. Typically, researchers focus on a limited set of relations (for example, person to person ties for user recommendation or annotations in social tagging recommendation). In this paper, we present a general approach to recommendation in heterogeneous networks that can incorporate multiple relations in a weighted hybrid. A key feature of this approach is the use of the metapath, an abstraction of a class of paths in a network in which edges of different types are traversed in a particular order. A user profile is therefore a composite of multiple metapath relations. Compared to prior work with shorter metapaths, we show that a hybrid composed of components using longer metapaths yields improvements in recommendation diversity without loss of accuracy on social tagging datasets.
机译:社交网络的特点是个人和实体之间的各种各样的联系。建议的挑战是表示和综合用户配置文件的所有有用方面。通常,研究人员侧重于一系列有限的关系(例如,人员在社交标记建议书中的用户推荐或注释的人员)。在本文中,我们介绍了一种在异构网络中推荐的一般方法,可以在加权混合中纳入多种关系。这种方法的一个关键特征是使用Metapath,在网络中遍历不同类型的边缘的网络中的一类路径的抽象。因此,用户简档是多个Metapath关系的复合。与以较短的Metapath进行的先前工作相比,我们表明,使用较长的元分类组成的混合动力器组成的组件产生的建议分集的提高,而不会损失社交标记数据集的准确性。

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