RWNE: A Scalable Random-Walk Based Network Embedding Framework with Personalized Higher-Order Proximity Preserved
Abstract
Higher-order proximity preserved network embedding has attracted increasing attention. In particular, due to the superior scalability, random-walk-based network embedding has also been well developed, which could efficiently explore higher-order neighborhoods via multi-hop random walks. However, despite the success of current random-walk-based methods, most of them are usually not expressive enough to preserve the personalized higher-order proximity and lack a straightforward objective to theoretically articulate what and how network proximity is preserved. In this paper, to address the above issues, we present a general scalable random-walk-based network embedding framework, in which random walk is explicitly incorporated into a sound objective designed theoretically to preserve arbitrary higher-order proximity. Further, we introduce the random walk with restart process into the framework to naturally and effectively achieve personalized-weighted preservation of proximities of different orders. We conduct extensive experiments on several real-world networks and demonstrate that our proposed method consistently and substantially outperforms the state-of-the-art network embedding methods.
Cite
Text
Li et al. "RWNE: A Scalable Random-Walk Based Network Embedding Framework with Personalized Higher-Order Proximity Preserved." Journal of Artificial Intelligence Research, 2021. doi:10.1613/JAIR.1.12567Markdown
[Li et al. "RWNE: A Scalable Random-Walk Based Network Embedding Framework with Personalized Higher-Order Proximity Preserved." Journal of Artificial Intelligence Research, 2021.](https://mlanthology.org/jair/2021/li2021jair-rwne/) doi:10.1613/JAIR.1.12567BibTeX
@article{li2021jair-rwne,
title = {{RWNE: A Scalable Random-Walk Based Network Embedding Framework with Personalized Higher-Order Proximity Preserved}},
author = {Li, Jianxin and Ji, Cheng and Peng, Hao and He, Yu and Song, Yangqiu and Zhang, Xinmiao and Peng, Fanzhang},
journal = {Journal of Artificial Intelligence Research},
year = {2021},
pages = {237-263},
doi = {10.1613/JAIR.1.12567},
volume = {71},
url = {https://mlanthology.org/jair/2021/li2021jair-rwne/}
}