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Tag2Vec: Learning Tag Representations in Tag Networks

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arxiv 1905.03041 v2 pith:HBTOCPZG submitted 2019-04-19 cs.SI cs.LGphysics.soc-phstat.ML

Tag2Vec: Learning Tag Representations in Tag Networks

classification cs.SI cs.LGphysics.soc-phstat.ML
keywords tagsinformationmodelnetworkssemantichierarchicalnetworknodes
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Network embedding is a method to learn low-dimensional representation vectors for nodes in complex networks. In real networks, nodes may have multiple tags but existing methods ignore the abundant semantic and hierarchical information of tags. This information is useful to many network applications and usually very stable. In this paper, we propose a tag representation learning model, Tag2Vec, which mixes nodes and tags into a hybrid network. Firstly, for tag networks, we define semantic distance as the proximity between tags and design a novel strategy, parameterized random walk, to generate context with semantic and hierarchical information of tags adaptively. Then, we propose hyperbolic Skip-gram model to express the complex hierarchical structure better with lower output dimensions. We evaluate our model on the NBER U.S. patent dataset and WordNet dataset. The results show that our model can learn tag representations with rich semantic information and it outperforms other baselines.

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