Beyond Pairwise Interactions: Unveiling the Role of Higher-Order Interactions via Stepwise Reduction
Junhap Bian, Tao Zhou, Yilin Bi

TL;DR
This paper investigates the importance of higher-order interactions in complex systems by systematically analyzing their impact on link prediction accuracy, revealing that their significance varies across different networks.
Contribution
It introduces a stepwise decomposition method to assess the role of higher-order interactions in link prediction, highlighting their variable importance in different network types.
Findings
Higher-order interactions can significantly improve link prediction in some networks.
In other networks, higher-order interactions have negligible impact.
The importance of higher-order interactions varies across different complex systems.
Abstract
Complex systems, such as economic, social, biological, and ecological systems, usually feature interactions not only between pairwise entities but also among three or more entities. These multi-entity interactions are known as higher-order interactions. Hypergraph, as a mathematical tool, can effectively characterize higher-order interactions, where nodes denote entities and hyperedges represent interactions among multiple entities. Meanwhile, all higher-order interactions can also be projected into a number of lower-order interactions or even some pairwise interactions. Whether it is necessary to consider all higher-order interactions, and whether it is with little loss to replace them by lower-order or even pairwise interactions, remain a controversial issue. If the role of higher-order interactions is insignificant, the complexity of computation and the difficulty of analysis can be…
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