ELRUNA: Elimination Rule-based Network Alignment
Zirou Qiu, Ruslan Shaydulin, Xiaoyuan Liu, Yuri Alexeev, Christopher, S. Henry, Ilya Safro

TL;DR
ELRUNA is a novel graph-structure-based network alignment algorithm that uses elimination rules and a random walk-based selection method to improve accuracy and robustness in aligning complex networks.
Contribution
The paper introduces ELRUNA, a new network alignment algorithm based solely on graph structure, and RAWSEM, a novel local search enhancement, outperforming existing methods.
Findings
ELRUNA outperforms state-of-the-art methods in accuracy.
ELRUNA maintains high performance under network noise.
RAWSEM improves alignment quality with fewer iterations.
Abstract
Networks model a variety of complex phenomena across different domains. In many applications, one of the most essential tasks is to align two or more networks to infer the similarities between cross-network vertices and discover potential node-level correspondence. In this paper, we propose ELRUNA (Elimination rule-based network alignment), a novel network alignment algorithm that relies exclusively on the underlying graph structure. Under the guidance of the elimination rules that we defined, ELRUNA computes the similarity between a pair of cross-network vertices iteratively by accumulating the similarities between their selected neighbors. The resulting cross-network similarity matrix is then used to infer a permutation matrix that encodes the final alignment of cross-network vertices. In addition to the novel alignment algorithm, we also improve the performance of local search, a…
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