Abstract

We study the evolution of networks through ‘triplets’—three-node graphlets. We develop a method to compute a transition matrix to describe the evolution of triplets in temporal networks. To identify the importance of higher-order interactions in the evolution of networks, we compare both artificial and real-world data to a model based on pairwise interactions only. The significant differences between the computed matrix and the calculated matrix from the fitted parameters demonstrate that non-pairwise interactions exist for various real-world systems in space and time, such as our data sets. Furthermore, this also reveals that different patterns of higher-order interaction are involved in different real-world situations. To test our approach, we then use these transition matrices as the basis of a link prediction algorithm. We investigate our algorithm’s performance on four temporal networks, comparing our approach against ten other link prediction methods. Our results show that higher-order interactions in both space and time play a crucial role in the evolution of networks as we find our method, along with two other methods based on non-local interactions, give the best overall performance. The results also confirm the concept that the higher-order interaction patterns, i.e., triplet dynamics, can help us understand and predict the evolution of different real-world systems.

Highlights

  • We study the evolution of networks through ‘triplets’—three-node graphlets

  • We provide a summary of the graph statistics in Table 1: Quantifying non pairwise interactions

  • We considered the temporal evolution of networks by looking at a sequence of snapshots of each network

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Summary

Introduction

We study the evolution of networks through ‘triplets’—three-node graphlets. We develop a method to compute a transition matrix to describe the evolution of triplets in temporal networks. When we look for higher order interactions, we find clear differences between the triplet transition matrix T and the simple pairwise reference model of T(pw) , especially in the Turkish Shareholder network Fig. 3a.

Results
Conclusion

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