Learning template-free network embeddings for heterogeneous link prediction

Cheng Te Li, Wei Chu Wang

研究成果: Article同行評審

2 引文 斯高帕斯(Scopus)

摘要

Network representation learning (NRL) is effective in generating node embeddings. To predict heterogeneous links between different types of nodes, NRL is not robustly investigated yet. Though existing studies on random walk-based heterogeneous NRL are available, it suffers from three drawbacks: need to specify “templates” (e.g., metapaths), require separate embedding learning in predicting heterogeneous links, and opt to generate low-quality embeddings when networks are incomplete or sparse. This work proposes a novel template-free NRL method, metawalk2vec, to tackle these issues for heterogeneous link prediction. The idea is allowing the random walker to visit diverse types of nodes, instead of following the pre-defined templates. While template-based methods use common context patterns for NRL, nodes depicted by uncommon context types can make their embeddings better distinguish from each other. We conduct the experiments of social (user-user) and adoption (user-item) link predictions on Twitter and Douban datasets. The results exhibit our metawalk2vec can achieve similar and even better performance than template-based models. We also show our model is more robust to the network incompleteness.

原文English
頁(從 - 到)13425-13435
頁數11
期刊Soft Computing
25
發行號21
DOIs
出版狀態Published - 2021 11月

All Science Journal Classification (ASJC) codes

  • 理論電腦科學
  • 軟體
  • 幾何和拓撲

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