58 research outputs found

    Anderson model on Bethe lattices: density of states, localization properties and isolated eigenvalue

    Full text link
    We revisit the Anderson localization problem on Bethe lattices, putting in contact various aspects which have been previously only discussed separately. For the case of connectivity 3 we compute by the cavity method the density of states and the evolution of the mobility edge with disorder. Furthermore, we show that below a certain critical value of the disorder the smallest eigenvalue remains delocalized and separated by all the others (localized) ones by a gap. We also study the evolution of the mobility edge at the center of the band with the connectivity, and discuss the large connectivity limit.Comment: 13 pages, 4 figures, Proceedings of the YKIS2009 conference, references adde

    Recovery thresholds in the sparse planted matching problem

    Get PDF
    We consider the statistical inference problem of recovering an unknown perfect matching, hidden in a weighted random graph, by exploiting the information arising from the use of two different distributions for the weights on the edges inside and outside the planted matching. A recent work has demonstrated the existence of a phase transition, in the large size limit, between a full and a partial recovery phase for a specific form of the weights distribution on fully connected graphs. We generalize and extend this result in two directions: we obtain a criterion for the location of the phase transition for generic weights distributions and possibly sparse graphs, exploiting a technical connection with branching random walk processes, as well as a quantitatively more precise description of the critical regime around the phase transition.Comment: 19 pages, 8 figure

    Biased landscapes for random Constraint Satisfaction Problems

    Full text link
    The typical complexity of Constraint Satisfaction Problems (CSPs) can be investigated by means of random ensembles of instances. The latter exhibit many threshold phenomena besides their satisfiability phase transition, in particular a clustering or dynamic phase transition (related to the tree reconstruction problem) at which their typical solutions shatter into disconnected components. In this paper we study the evolution of this phenomenon under a bias that breaks the uniformity among solutions of one CSP instance, concentrating on the bicoloring of k-uniform random hypergraphs. We show that for small k the clustering transition can be delayed in this way to higher density of constraints, and that this strategy has a positive impact on the performances of Simulated Annealing algorithms. We characterize the modest gain that can be expected in the large k limit from the simple implementation of the biasing idea studied here. This paper contains also a contribution of a more methodological nature, made of a review and extension of the methods to determine numerically the discontinuous dynamic transition threshold.Comment: 32 pages, 16 figure

    On the stochastic dynamics of disordered spin models

    Full text link
    In this article we discuss several aspects of the stochastic dynamics of spin models. The paper has two independent parts. Firstly, we explore a few properties of the multi-point correlations and responses of generic systems evolving in equilibrium with a thermal bath. We propose a fluctuation principle that allows us to derive fluctuation-dissipation relations for many-time correlations and linear responses. We also speculate on how these features will be modified in systems evolving slowly out of equilibrium, as finite-dimensional or dilute spin-glasses. Secondly, we present a formalism that allows one to derive a series of approximated equations that determine the dynamics of disordered spin models on random (hyper) graphs.Comment: 25 page

    The asymptotics of the clustering transition for random constraint satisfaction problems

    Full text link
    Random Constraint Satisfaction Problems exhibit several phase transitions when their density of constraints is varied. One of these threshold phenomena, known as the clustering or dynamic transition, corresponds to a transition for an information theoretic problem called tree reconstruction. In this article we study this threshold for two CSPs, namely the bicoloring of kk-uniform hypergraphs with a density α\alpha of constraints, and the qq-coloring of random graphs with average degree cc. We show that in the large k,qk,q limit the clustering transition occurs for α=2k−1k(ln⁥k+ln⁥ln⁥k+Îłd+o(1))\alpha = \frac{2^{k-1}}{k} (\ln k + \ln \ln k + \gamma_{\rm d} + o(1)), c=q(ln⁥q+ln⁥ln⁥q+Îłd+o(1))c= q (\ln q + \ln \ln q + \gamma_{\rm d}+ o(1)), where Îłd\gamma_{\rm d} is the same constant for both models. We characterize Îłd\gamma_{\rm d} via a functional equation, solve the latter numerically to estimate Îłd≈0.871\gamma_{\rm d} \approx 0.871, and obtain an analytic lowerbound Îłd≄1+ln⁥(2(2−1))≈0.812\gamma_{\rm d} \ge 1 + \ln (2 (\sqrt{2}-1)) \approx 0.812. Our analysis unveils a subtle interplay of the clustering transition with the rigidity (naive reconstruction) threshold that occurs on the same asymptotic scale at Îłr=1\gamma_{\rm r}=1.Comment: 35 pages, 8 figure
    • 

    corecore