31 research outputs found

    Connectivity of inhomogeneous random graphs

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    We find conditions for the connectivity of inhomogeneous random graphs with intermediate density. Our results generalize the classical result for G(n, p), when p = c log n/n. We draw n independent points X_i from a general distribution on a separable metric space, and let their indices form the vertex set of a graph. An edge (i,j) is added with probability min(1, \K(X_i,X_j) log n/n), where \K \ge 0 is a fixed kernel. We show that, under reasonably weak assumptions, the connectivity threshold of the model can be determined.Comment: 13 pages. To appear in Random Structures and Algorithm

    THE DIAMETER OF INHOMOGENEOUS RANDOM GRAPHS

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    International audienceIn this paper we study the diameter of inhomogeneous random graphs G(n, κ, p) that are induced by irreducible kernels κ. The kernels we consider act on separable metric spaces and are almost everywhere continuous. We generalize results known for the Erd˝ os-Rényi model G(n, p) for several ranges of p. We find upper and lower bounds for the diameter of G(n, κ, p) in terms of the expansion factor and two explicit constants that depend on the behavior of the kernel over partitions of the metric space

    The Bulk and the Extremes of Minimal Spanning Acycles and Persistence Diagrams of Random Complexes

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    Frieze showed that the expected weight of the minimum spanning tree (MST) of the uniformly weighted graph converges to ζ(3)\zeta(3). Recently, this result was extended to a uniformly weighted simplicial complex, where the role of the MST is played by its higher-dimensional analogue -- the Minimum Spanning Acycle (MSA). In this work, we go beyond and look at the histogram of the weights in this random MSA -- both in the bulk and in the extremes. In particular, we focus on the `incomplete' setting, where one has access only to a fraction of the potential face weights. Our first result is that the empirical distribution of the MSA weights asymptotically converges to a measure based on the shadow -- the complement of graph components in higher dimensions. As far as we know, this result is the first to explore the connection between the MSA weights and the shadow. Our second result is that the extremal weights converge to an inhomogeneous Poisson point process. A interesting consequence of our two results is that we can also state the distribution of the death times in the persistence diagram corresponding to the above weighted complex, a result of interest in applied topology.Comment: 15 pages, 5 figures, Corrected Typo

    Opinion dynamics on directed complex networks

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    We propose and analyze a mathematical model for the evolution of opinions on directed complex networks. Our model generalizes the popular DeGroot and Friedkin-Johnsen models by allowing vertices to have attributes that may influence the opinion dynamics. We start by establishing sufficient conditions for the existence of a stationary opinion distribution on any fixed graph, and then provide an increasingly detailed characterization of its behavior by considering a sequence of directed random graphs having a local weak limit. Our most explicit results are obtained for graph sequences whose local weak limit is a marked Galton-Watson tree, in which case our model can be used to explain a variety of phenomena, e.g., conditions under which consensus can be achieved, mechanisms in which opinions can become polarized, and the effect of disruptive stubborn agents on the formation of opinions

    Stochastic recursions on directed random graphs

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    For a directed graph G(Vn,En)G(V_n, E_n) on the vertices Vn={1,2,,n}V_n = \{1,2, \dots, n\}, we study the distribution of a Markov chain {R(k):k0}\{ {\bf R}^{(k)}: k \geq 0\} on Rn\mathbb{R}^n such that the iith component of R(k){\bf R}^{(k)}, denoted Ri(k)R_i^{(k)}, corresponds to the value of the process on vertex ii at time kk. We focus on processes {R(k):k0}\{ {\bf R}^{(k)}: k \geq 0\} where the value of Ri(k+1)R_i^{(k+1)} depends only on the values {Rj(k):ji}\{ R_j^{(k)}: j \to i\} of its inbound neighbors, and possibly on vertex attributes. We then show that, provided G(Vn,En)G(V_n, E_n) converges in the local weak sense to a marked Galton-Watson process, the dynamics of the process for a uniformly chosen vertex in VnV_n can be coupled, for any fixed kk, to a process {R(r):0rk}\{ \mathcal{R}_\emptyset^{(r)}: 0 \leq r \leq k\} constructed on the limiting marked Galton-Watson tree. Moreover, we derive sufficient conditions under which R(k)\mathcal{R}^{(k)}_\emptyset converges, as kk \to \infty, to a random variable R\mathcal{R}^* that can be characterized in terms of the attracting endogenous solution to a branching distributional fixed-point equation. Our framework can also be applied to processes {R(k):k0}\{ {\bf R}^{(k)}: k \geq 0\} whose only source of randomness comes from the realization of the graph G(Vn,En)G(V_n, E_n)
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