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Structural Balance and Random Walks on Complex Networks with Complex Weights

Yu Tian, Renaud Lambiotte

2024SIAM Journal on Mathematics of Data Science14 citationsDOIOpen Access PDF

Abstract

.Complex numbers define the relationship between entities in many situations. A canonical example would be the off-diagonal terms in a Hamiltonian matrix in quantum physics. Recent years have seen an increasing interest to extend the tools of network science when the weight of edges are complex numbers. Here, we focus on the case when the weight matrix is Hermitian, a reasonable assumption in many applications, and investigate both structural and dynamical properties of the networks with complex weights. Building on concepts from signed graphs, we introduce a classification of complex-weighted networks based on the notion of structural balance and illustrate the shared spectral properties within each type. We then apply the results to characterize the dynamics of random walks on complex-weighted networks, where local consensus can be achieved asymptotically when the graph is structurally balanced, while global consensus will be obtained when it is strictly unbalanced. Finally, we explore potential applications of our findings by generalizing the notion of cut and propose an associated spectral clustering algorithm. We also provide further characteristics of the magnetic Laplacian, associating directed networks to complex-weighted ones. The performance of the algorithm is verified on both synthetic and real networks.Keywordscomplex weightsstructural balance and antibalancerandom walksspectral clusteringmagnetic LaplacianMSC codes05C2205C5005C8137E2539A0691D3094C15

Topics & Concepts

Complex networkLaplacian matrixDiagonalComplex systemDetailed balanceComputer scienceSpectral clusteringRandom walkTheoretical computer scienceRandom matrixSpectral graph theoryRandom graphMathematicsHamiltonian (control theory)Cluster analysisGraphStatistical physicsArtificial intelligenceMathematical optimizationEigenvalues and eigenvectorsCombinatoricsStatisticsGraph powerQuantum mechanicsPhysicsGeometryLine graphComplex Network Analysis TechniquesOpinion Dynamics and Social InfluenceFunctional Brain Connectivity Studies
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