Pairwise versus multiple network alignment
Vipin Vijayan, Shawn Gu, Eric Krebs, Lei Meng, and Tijana Milenkovic

TL;DR
This paper compares pairwise and multiple network alignment methods in biological networks, revealing that pairwise methods often outperform multiple methods even in multiple network scenarios, challenging assumptions about their relative effectiveness.
Contribution
The paper introduces a framework for comparing PNA and MNA methods across different evaluation settings, providing a comprehensive analysis of their relative performance.
Findings
PNA outperforms MNA in pairwise evaluation.
MNA does not always outperform PNA in multiple network evaluation.
Evaluation results depend on the chosen test and framework.
Abstract
Biological network alignment (NA) aims to identify similar regions between molecular networks of different species. NA can be local or global. Just as the recent trend in the NA field, we also focus on global NA, which can be pairwise (PNA) and multiple (MNA). PNA produces aligned node pairs between two networks. MNA produces aligned node clusters between more than two networks. Recently, the focus has shifted from PNA to MNA, because MNA captures conserved regions between more networks than PNA (and MNA is thus considered to be more insightful), though at higher computational complexity. The issue is that, due to the different outputs of PNA and MNA, a PNA method is only compared to other PNA methods, and an MNA method is only compared to other MNA methods. Comparison of PNA against MNA must be done to evaluate whether MNA's higher complexity is justified by its higher accuracy. We…
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