On Applying Meta-path for Network Embedding in Mining Heterogeneous DBLP Network
August 14, 2018 Β· Declared Dead Β· π Pattern Recognition and Machine Intelligence
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Authors
Akash Anil, Uppinder Chugh, Sanasam Ranbir Singh
arXiv ID
1808.04799
Category
cs.SI: Social & Info Networks
Citations
3
Venue
Pattern Recognition and Machine Intelligence
Last Checked
4 months ago
Abstract
In recent time, applications of network embedding in mining real-world information network have been widely reported in the literature. Majority of the information networks are heterogeneous in nature. Meta-path is one of the popularly used approaches for generating embedding in heterogeneous networks. As meta-path guides the models towards a specific sub-structure, it tends to lose some hetero- geneous characteristics inherently present in the underlying network. In this paper, we systematically study the effects of different meta-paths using different state-of-art network embedding methods (Metapath2vec, Node2vec, and VERSE) over DBLP bibliographic network and evaluate the performance of embeddings using two applications (co-authorship prediction and authors research area classification tasks). From various experimental observations, it is evident that embedding using different meta-paths perform differently over different tasks. It shows that meta- paths are task-dependent and can not be generalized for different tasks. We further observe that embedding obtained after considering all the node and relation types in bibliographic network outperforms its meta- path based counterparts.
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