ETC Trento Workshop Spectral properties of complex networks

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Presentation transcript:

ETC Trento Workshop Spectral properties of complex networks Trento 23-29 July, 2012 Spectral properties of complex networks and classical/quantum phase transitions Ginestra Bianconi Department of Physics, Northeastern University, Boston

Complex topologies affect the behavior of critical phenomena Scale-free degree distribution change the critical behavior of the Ising model, Percolation, epidemic spreading on annealed networks Spectral properties change the synchronization properties, epidemic spreading on quenched networks  Nishikawa et al.PRL 2003

Outline of the talk Generalization of the Ginsburg criterion for spatial complex networks (classical Ising model) Random Transverse Ising model on annealed and quenched networks The Bose-Hubbard model on annealed and quenched networks

How do critical phenomena on complex networks change if we include spatial interactions?

Annealed uncorrelated complex networks In annealed uncorrelated complex networks, we assign to each node an expected degree  Each link is present with probability pij The degree ki a node i is a Poisson variable with mean i Boguna, Pastor-Satorras PRE 2003

Ising model in annealed complex networks The Ising model on annealed complex networks has Hamiltonian given by The critical temperature is given by The magnetization is non-homogeneous G. Bianconi 2002,S.N. Dorogovtsev et al. 2002, Leone et al. 2002, Goltsev et al. 2003,Lee et al. 2009

Critical exponents of the Ising model on complex topologies C(T<Tc)  >5 |Tc-T|1/2 Jump at Tc |Tc-T|-1 =5 |T-Tc|1/2/(|ln|TcT||)1/2 1/ln|Tc-T| 3<<5 |Tc-T|1/(-1) |Tc-T|-)/(-3) =3 e-2T/<> T2e-4T/<> T-1 2<<3 T3-) T-1)/(3-) Goltsev et al. 2003 But the critical fluctuations still remain mean-field !

Ensembles of spatial complex networks The maximally entropic network with spatial structure has link probability given by J(d) The function J(d) can be measured in real spatial networks Airport Network Bianconi et al. PNAS 2009

Annealead Ising model in spatial complex networks The linking probability of spatial complex networks is chosen to be The Ising model on spatial annealed complex networks has Hamiltonian given by We want to study the critical fluctuations in this model as a function of the typical range of the interactions

Stability of the mean-field approximation The partition function is given by The magnetization in the mean field approximation is given by The susceptibility is then evaluated by stationary phase approximation

Stationary phase approximation The free energy is given in the stationary phase approximation by The inverse susceptibility matrix is given by

Results of the stationary phase approximation We project the results into the base of eigenvalues  and eigenvectors u of the matrix pij. The critical temperature Tc is given by where  is the maximal eigenvalue of the matrix pij and The inverse susceptibility is given by

Critical fluctuations We assume that the spectrum is given by  is the spectral gap and c the spectral edge. Anomalous critical fluctuations sets in only if the gap vanish in the thermodynamic limit, and S<1 For regular lattice S =(d-2)/2 S<1 only if d<4 The effective dimension of complex networks is deff =2S +2  c  

Distribution of the spectral gap  For networks with the spectral gap  is non-self-averaging but its distribution is stable. SF=4,d0=1 SF=6 d0=1

Criteria for onset anomalous critical fluctuations In order to predict anomalous critical fluctuations we introduce the quantity If and anomalous fluctuations sets in. S. Bradde F. Caccioli L. Dall’Asta G. Bianconi PRL 2010

Random Transverse Ising model This Hamiltonian mimics the Superconductor-Insulator phase transition in a granular superconductor (L. B. Ioffe, M. Mezard PRL 2010, M. V. Feigel’man, L. B. Ioffe, and M. Mézard PRE 2010) To mimic the randomness of the onsite noise we draw ei from a r(e) distribution. The superconducting phase transition would correspond with the phase with spontaneous magnetization in the z direction.

Scale-free structural organization of oxygen interstitials in La2CuO4+ y 16K Tc=16K Fratini et al. Nature 2010

RTIM on an Annealed complex network In the annealed network model we can substitute in the Hamiltonian The order parameter is The magnetization depends on the expected degree q G. Bianconi, PRE 2012

The critical temperature Equation for Tc Complex network topology Scaling of Tc G. Bianconi, PRE 2012

Solution of the RTIM on quenched network

On the critical line if we apply an infinitesimal field at the periphery of the network, the cavity field at a given site is given by

Dependence of the phase diagram from the cutoff of the degree distribution For a random scale-free network In general there is a phase transition at zero temperature. Nevertheless for l<3 the critical coupling Jc(T=0) decreases as the cutoff x increases. The system at low temperature is in a Griffith Phase described by a replica-symmetry broken Phase in the mapping to the random polymer problem

The replica-symmetry broken phase decreases in size with increasing values of the cutoff for power-law exponent g less or equal to 3 G. Bianconi JSTAT 2012

Enhancement of Tc with the increasing value of the exponential cutoff The critical temperature for l less or equal to 3 Increases with increasing exponential cutoff of the degree distribution

Bose-Hubbard model on complex networks U on site repulsion of the Bosons, m chemical potential t coefficient of hopping tij adjacency matrix of the network

Optical lattices Optical lattice are nowadays use to localize cold atoms That can hop between sites by quantum tunelling. These optical lattices have been use to test the behavior of quantum models such as the Bose-Hubbard model which was first realized with cold atoms by Greiner et al. in 2002. The possible realization of more complex network topologies to localize cold atoms remains an open problem. Here we want to show the consequences on the phase diagram of quantum phase transition defined on complex networks.

Bose-Hubbard model: a challenge Experimental evidence Absorption images of multiple matter wave interface pattern as a function of the depth of the potential of the optical lattice Greiner,Mandel,Esslinger, Hansh, Bloch Nature 2002 Theoretical approaches The solution of the Bose-Hubbard model even on a Bethe lattice Represent a challenge, available techniques are mean-field, dynamical mean-field model, quantum cavity model Semerjian, Tarzia, Zamponi PRE 2009

Mean field approximation with on annealed network

Mean-field Hamiltonian and order parameter on a annealed network Order parameter of the phase transition

Perturbative solution of the effective single site Hamiltonian

Mean-field solution of the B-H model on annealed complex network The critical line is determined by the line in which the mass term goes to zero m (tc,U,m)=0 There is no Mott-Insulator phase as long as the second Moment of the expected degree distribution diverges

Mean-field solution on quenched network Critical lines and phase diagram

Maximal Eigenvalue of the adjacency matrix on networks Random networks Apollonian networks

Mean-field phase diagram of random scale-free network Halu, Ferretti, Vezzani, Bianconi EPL 2012

Bose-Hubbard model on Apollonian network The effective Mott-Insulator phase decreases with network size and disappear in the thermodynamic limit

References S. Bradde, F. Caccioli, L. Dall’Asta and G. Bianconi Critical fluctuations in spatial networks Phys. Rev. Lett. 104, 218701 (2010). A. Halu, L. Ferretti, A. Vezzani G. Bianconi Phase diagram of the Bose-Hubbard Model on Complex Networks EPL 99 1 18001 (2012) G. Bianconi Supercondutor-Insulator Transition on Annealed Complex Networks Phys. Rev. E 85, 061113 (2012). G. Bianconi Enhancement of Tc in the Superconductor-Insulator Phase Transition on Scale-Free Networks JSTAT 2012 (in press) arXiv:1204.6282

Conclusions Critical phase transitions when defined on complex networks display new phase diagrams The spectral properties and the degree distribution play a crucial role in determining the phase diagram of critical phenomena in networks We can generalize the Ginsburg criterion to complex networks The Random Transverse Ising Model (RTIM) on scale-free networks with exponential cutoff has a critical temperature that depends on the cutoff if the power-law exponent g<3. The Bose-Hubbard model on quenched network has a phase diagram that depend on the spectral properties of the network This open new perspective in studying the interplay between spectral properties and classical/ quantum phase transition in networks

Lattices and quasicrystal A lattice is a regular pattern of points and links repeating periodically in finite dimensions

Scale-free networks with with with

Conclusions Critical phase transitions when defined on complex networks display new phase diagrams The Random Transverse Ising Model (RTIM) on scale-free networks with exponential cutoff has a critical temperature that depends on the cutoff if the power-law exponent l<3. We have characterized the Bose-Hubbard model on annealed and quenched networks by the mean-field model This open new perspective in studying other quantum phase transitions such as rotor models, quantum spin-glass models on complex networks Experimental implementation of potentials describing complex networks could open new scenario for the realization of cold atoms multi-body states with new phase diagrams