RANA: Robust Active Learning for Noisy Network Alignment
Yixuan Nan, Xixun Lin, Yanmin Shang, Zhuofan Li, Can Zhao, Yanan Cao

TL;DR
RANA introduces a robust active learning framework that effectively handles structural and labeling noise in network alignment, improving accuracy on real-world datasets by integrating noise-aware selection and label denoising modules.
Contribution
The paper presents RANA, a novel active learning approach that addresses both structural and label noise in network alignment, enhancing robustness and accuracy.
Findings
RANA outperforms existing methods in alignment accuracy.
The noise-aware selection module effectively identifies clean node pairs.
The label denoising module improves label quality for better alignment results.
Abstract
Network alignment has attracted widespread attention in various fields. However, most existing works mainly focus on the problem of label sparsity, while overlooking the issue of noise in network alignment, which can substantially undermine model performance. Such noise mainly includes structural noise from noisy edges and labeling noise caused by human-induced and process-driven errors. To address these problems, we propose RANA, a Robust Active learning framework for noisy Network Alignment. RANA effectively tackles both structure noise and label noise while addressing the sparsity of anchor link annotations, which can improve the robustness of network alignment models. Specifically, RANA introduces the proposed Noise-aware Selection Module and the Label Denoising Module to address structural noise and labeling noise, respectively. In the first module, we design a noise-aware…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
