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Goal: Spin glass transition. From the experiments with the anomaly on the magnetic susceptibility to order parameter of the transition. We will discuss the arguments linked to extreme value statistics


Spin glass Transition

Spin glass behavior was first observed in experiments with non-magnetic metals (such as Cu, Fe, Au, etc.) doped with a small percentage of magnetic impurities, typically Mn. At low doping levels, the magnetic moments of Mn atoms interact via the Ruderman–Kittel–Kasuya–Yosida (RKKY) interaction. This interaction has a random sign due to the random spatial distribution of Mn atoms within the non-magnetic metal. A freezing temperature, , separates the high-temperature paramagnetic phase from the low-temperature spin glass phase:

  • Above : The magnetic susceptibility follows the standard Curie law, .
  • Below : Strong metastability emerges, leading to differences between the field-cooled (FC) and zero-field-cooled (ZFC) protocols:

(i) In the ZFC protocol, the susceptibility decreases with decreasing temperature, .

(ii)In the FC protocol, the susceptibility freezes at , remaining constant at .

Understanding whether these data reveal a true thermodynamic transition and determining the nature of this new "glassy" phase remains an open challenge to this day. However, in the early 1980s, spin glass models were successfully solved within the mean-field approximation. In this limit, it is possible to determine the phase diagram and demonstrate the existence of a glassy phase where the entropy vanishes at a finite temperature. Furthermore, a condensation of the Gibbs measure onto a few configurations is observed.

Edwards Anderson model

The first significant theoretical attempt to describe spin glasses is the Edwards-Anderson model. For simplicity, we will consider the Ising version of this model.

Ising spins take two values, , and are located on a lattice with sites, indexed by . The energy of the system is expressed as a sum over nearest neighbors :

Edwards and Anderson proposed studying this model with couplings that are independent and identically distributed (i.i.d.) random variables with a zero mean. The coupling distribution is denoted by , and the average over the couplings, referred to as the disorder average, is indicated by an overline:

We will consider two specific coupling distributions:

  • Gaussian couplings: .
  • Coin-toss couplings: , chosen with equal probability .

Edwards Anderson order parameter

Since , the model does not exhibit spatial magnetic order, such as ferromagnetic or antiferromagnetic order. Instead, the idea is to distinguish between two phases:

  • Paramagnetic phase: Configurations are explored with all possible spin orientations.
  • Spin glass phase: Spin orientations are random but frozen (i.e., immobile).

The glass phase is characterized by long-range correlations in time, despite the absence of long-range correlations in space. The order parameter for this phase is:

where measures the overlap of the spin configuration with itself after a long time.

In the paramagnetic phase, , while in the spin glass phase, .

This raises the question of whether the transition at is truly thermodynamic in nature. Indeed, in the definition of the Edwards-Anderson (EA) parameter, time seems to play a role, and the magnetic susceptibility does not diverge at the freezing temperature . The divergence of the magnetic susceptibility in ferromagnets is due to the fact that the magnetization serves as the order parameter, distinguishing the ordered and disordered phases. However, in the spin glass model, magnetization is zero in both phases and the order parameter is .

It can be shown that the associated susceptibility corresponds to the nonlinear susceptibility:

where is the linear susceptibility, and are higher-order coefficients. Experiments have demonstrated that and exhibit singular behavior, providing experimental evidence for the existence of a thermodynamic transition at .

The SK model

Sherrington and Kirkpatrik considered the fully connected version of the model with Gaussian couplings:

At the inverse temperature , the partion function of the model is

Here is the energy associated to the configuration . This model presents a thermodynamic transition.

Random energy model

The solution of the Sherrington-Kirkpatrick (SK) model is challenging. To make progress, we first study the Random Energy Model (REM), introduced by B. Derrida. This model simplifies the problem by neglecting correlations between the configurations and assuming that the energies are independent and identically distributed (i.i.d.) random variables. Here, "independent" means that the energy of one configuration does not influence the energy of another, e.g., a configuration identical to the previous one except for a spin flip. "Identically distributed" indicates that all configurations follow the same probability distribution.

Energy Distribution: Show that the energy distribution is given by:

and determine that:

.

In the following, we present the original solution of the model. Here, we characterize the glassy phase by analyzing the statistical properties of the smallest energy values among the configurations. To address this, it is necessary to make a brief detour into the theory of extreme value statistics for i.i.d. random variables.

Detour: Extreme Value Statistics

Consider the energies as independent and identically distributed (i.i.d.) random variables drawn from a distribution . It is useful to introduce the cumulative probability of finding an energy smaller than E:

The complementary probability of finding an energy larger than E is:

We define:

Our goal is to compute the cumulative distribution:

for large . To achieve this, we rely on three key relations:

  • First relation:

This relation is exact but depends on and the precise form of . However, in the large limit, a universal behavior emerges.

  • Second relation: The typical value of the minimum energy, , satisfies:

This is an estimation of the typical value of the minimum. It is a crucial relation that will be used frequently in this context.

  • Third relation: For , we have:

This is an approximation valid around the typical value of the minimum energy.


A Concrete Example: The Gaussian Case

To understand how a universal scaling form emerges, let us analyze in detail the case of a Gaussian distribution with zero mean and variance . Using integration by parts, we can write :

Hence we derive the following asymptotic expansion for  :

It is convenient to introduce the function defined as

Using this expansion and the second relation introduced earlier, show that for large , the typical value of the minimum energy is:

The Scaling Form in the Large M Limit

In the spirit of the central limit theorem, we look for a scaling form:

The constants and absorb the dependence on , while the random variable is distributed according to a probability distribution that does not depend on .

Starting from the third relation introduced earlier, we expand around :

We identify:

This implies:

Therefore, the variable is distributed according the Gumbel distribution:

It is possible to generalize the result and classify the scaling forms into three distinct universality classes:

  • Gumbel Distribution:
    • Characteristics:
      • Applies when the tails of decay faster than any power law.
      • Example: Gaussian or exponential distributions .
    • Scaling Form:
  • Weibull Distribution:
    • Characteristics:
      • Applies to distributions with finite lower bounds.
      • Example: Uniform or .
    • Scaling Form:

where controls the shape of the distribution.

  • Fréchet Distribution:
    • Characteristics:
      • Applies when the tails of exhibit a power-law decay .
      • Example: Pareto or Lévy distributions.
    • Scaling Form:

These three classes, known as the Gumbel, Weibull, and Fréchet distributions, represent the universality of extreme value statistics and cover all possible asymptotic behaviors of .

Ground State Fluctuations

Depending on the distribution , we observe different dependencies of M for and . To emphasize the N dependence, we define:

Note that the typical fluctuations of the minimum are . Specifically, we can write:

We will see that three distinct scenarios emerge depending on the sign of .

Density of states above the minimum

For a given disorder realization, we compute , the number of configurations above the minimum with an energy smaller than . The key relation for this quantity is:

Taking the average, we get . We use the following identity

we arrive to the final form

Replace and obtain

The Glass Phase

In the glass phase, the measure is concentrated in a few configurations with finite occupation probability, while in the paramagnetic phase, the occupation probability is . As a result, the entropy is extensive in the paramagnetic phase but sub-extensive in the glass phase. It is useful to compare the weight of the ground state against the weight of other states. Define:

  • In the high-temperature phase, for , the weight of the excited states diverges. This means that the ground state is not deep enough to make the system glassy.
  • In the low-temperature phase, for , the integral is finite:

This means that below the freezing temperature the weight of all the excited states is of the same order of the weight of the ground state which implies that the ground state is occupied with a finite probability, similar to Bose-Einstein condensation.

Take home message

Let us recall , so that three situations can occur

  • For , there is no freezing transition as there are too many states just above the minimum. This is the situation of many low-dimensional systems such as the Edwards Anderson model is two dimensions.
  • For there are two important features: (i) there is only the glass phase, (ii) the system condensate only in the ground state because the excited states have very high energy. We will see that in real systems (i) is not always the case and that the exponent can change with temperature. This situation can be realistic (there is a very deep groud sate), but it is not revolutionary as the following one.
  • For there is for sure a freezing transition. For the Random Energy Model defined above One important feature of this transition that we will see in the next tutorial is that the condensation does not occur only in the ground state but in a large (yet not extensive) number of low energy exctitations.


References

  • Spin glass i-vii, P.W. Anderson, Physics Today, 1988
  • Spin glasses: Experimental signatures and salient outcome, E. Vincent and V. Dupuis, Frustrated Materials and Ferroic Glasses 31 (2018).
  • Theory of spin glasses, S. F. Edwards and P. W. Anderson, J. Phys. F: Met. Phys. 5 965 (1975).
  • Non-linear susceptibility in spin glasses and disordered systems, H. Bouchiat, Journal of Physics: Condensed Matter, 9, 1811 (1997).
  • Solvable Model of a Spin-Glass, D. Sherrington and S. Kirkpatrick, Physical Review Letters, 35, 1792 (1975).
  • Random-Energy Model: An Exactly Solvable Model of Disordered Systems, B.Derrida,Physical Review B, 24, 2613 (1980).
  • Extreme value statistics of correlated random variables: a pedagogical review, S. N. Majumdar, A. Pal, and G. Schehr, Physics Reports 840, 1-32, (2020).