On the critical exponent $\alpha$ of the 5D random-field Ising model
Nikolaos G. Fytas, Victor Martin-Mayor, Giorgio Parisi, Marco Picco,, and Nicolas Sourlas

TL;DR
This paper estimates the critical exponent alpha of the specific heat in the 5D random-field Ising model using zero-temperature simulations, supporting the idea of dimensional reduction restoration at five dimensions.
Contribution
It provides a new numerical estimate of alpha that aligns with hyperscaling relations, offering evidence for dimensional reduction in the 5D RFIM.
Findings
Estimated alpha = 0.12(2) from simulations
Results support restoration of dimensional reduction at D=5
Consistent with hyperscaling relation predictions
Abstract
We present a complementary estimation of the critical exponent of the specific heat of the 5D random-field Ising model from zero-temperature numerical simulations. Our result is consistent with the estimation coming from the modified hyperscaling relation and provides additional evidence in favor of the recently proposed restoration of dimensional reduction in the random-field Ising model at .
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On the critical exponent of the 5D random–field Ising model
Nikolaos G. Fytas1, Víctor Martín-Mayor2,3, Giorgio Parisi4, Marco Picco5, and Nicolas Sourlas6
1Applied Mathematics Research Centre, Coventry University, Coventry CV1 5FB, United Kingdom
2Departamento de Física Téorica I, Universidad Complutense, 28040 Madrid, Spain
3Instituto de Biocomputacíon y Física de Sistemas Complejos (BIFI), 50009 Zaragoza, Spain
4Dipartimento di Fisica, Sapienza Università di Roma, P.le Aldo Moro 2, 00185 Rome, Italy and INFN, Sezione di Roma I, NANONTEC – CNR, P.le A. Moro 2, 00185 Rome, Italy
5Laboratoire de Physique Théorique et Hautes Energies, UMR7589, Sorbonne Université et CNRS, 4 Place Jussieu, 75252 Paris Cedex 05, France
6Laboratoire de Physique Théorique de l’Ecole Normale Supérieure (Unité Mixte de Recherche du CNRS et de l’Ecole Normale Supérieure, associée à l’Université Pierre et Marie Curie, PARIS VI) 24 rue Lhomond, 75231 Paris CEDEX 05, France
Abstract
We present a complementary estimation of the critical exponent of the specific heat of the 5D random-field Ising model from zero-temperature numerical simulations. Our result is consistent with the estimation coming from the modified hyperscaling relation and provides additional evidence in favor of the recently proposed restoration of dimensional reduction in the random-field Ising model at .
pacs:
705.50.+q, 75.10.Hk, 64.60.Cn, 75.10.Nr
††: Journal of Statistical Mechanics
The random-field Ising model (RFIM) is one of the archetypal disordered systems [1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15], extensively studied due to its theoretical interest, as well as its close connection with experiments in condensed-matter physics [15, 16, 17, 18, 19]. Its beauty stems from the combination of random fields and the standard Ising model that creates rich and complicated physical phenomena, responsible for a great volume of research over the last 40 years and more. It is well established that the physically relevant dimensions of the RFIM lay between , where and are the lower and upper critical dimensions of the model, respectively. For one expects the standard mean-field behavior [1, 8, 9, 10, 20, 21], whereas exactly at the notoriously obscuring logarithmic corrections appear [22].
In the last few years, the development of a powerful panoply of simulation and statistical analysis methods [23] have set the basis for a fresh revision of the problem. In fact, some of the main controversies have been resolved, the most notable being the illustration of critical universality in terms of different random-field distributions [24, 25, 26] and the restoration of supersymmetry and dimensional reduction at [27, 28, 29] (see also references [30, 31, 32, 33] for additional evidence in this respect).
In particular, the large-scale numerical simulations of the 5D RFIM reported in reference [27] have provided high-accuracy estimates for the spectrum of critical exponents and for several universal ratios (see Table III in reference [27]), with one missing element: that of the direct computation of the critical exponent of the specific heat. Let us point out that the specific heat of the RFIM is of experimental interest [18] and that the value of has severe implications for the validity of the fundamental scaling relations, and in particular for the Rushbrooke relation, , that has been the most controversial of all [34, 35, 36, 37, 38]. Therefore a strong command on this aspect of the model’s critical behavior is necessary. In the current work we fill this gap by performing additional simulations and scaling analysis that allow us to directly compute for the 5D RFIM and to therefore present a complete picture of the scaling behavior of the specific heat. Our final estimate, , agrees well with that of the 3D Ising universality class, [39], and therefore constitutes additional evidence in favor of our recently proposed restoration of dimensional reduction at [27, 28, 29].
The RFIM Hamiltonian is
[TABLE]
with the spins occupying the nodes of a hyper-cubic lattice in space dimension with nearest-neighbor ferromagnetic interactions and independent random magnetic fields with zero mean and dispersion . Here we consider the Hamiltonian (1) on a hyper-cubic lattice with periodic boundary conditions and energy units . Our random fields follow either a Gaussian , or a Poissonian distribution of the form
[TABLE]
where and the disorder-strength control parameter.
As it is well-established, in order to describe the critical behavior of the model one needs two correlation functions, namely the connected and disconnected propagators, and :
[TABLE]
where the are thermal mean values as computed for a given realization, a sample, of the random fields . Over-line refers to the average over the samples. Following the prescription of reference [23], for each of these two propagators we scrutinize the second-moment correlation lengths, denoted as and , respectively.
Our numerical simulations for the 5D RFIM are described in reference [27]. We therefore outline here the very necessary details. We simulated lattice sizes from to . For each pair of (, ) values we generated ground states for samples – for the additional simulations at the most accurate determinations of the critical points shown below in figures 4 and 5, samples were generated – exceeding previous relevant studies [22] by a factor of on average. The calculation of the ground states of the RFIM was based on the well-established mapping [34, 35, 36, 37, 38, 40, 41, 42, 43, 44, 45, 46, 47, 48, 49, 50, 51, 52, 53, 54, 55] to the maximum-flow problem [56, 57, 58]. We used our own C version of the push-relabel algorithm of Tarjan and Goldberg [59], involving some technical modifications proposed by Middelton and collaborators for further efficiency [46, 47]. Suitable generalized fluctuation-dissipation formulas and reweighting extrapolations have facilitated our analysis, as exemplified in reference [23]. A comparative illustration in favor of the numerical accuracy of our scheme is shown in figure 1 for the universal ratio of an L = 10 Gaussian RFIM and four different simulation sets, as outlined in the panel.
The specific heat of the RFIM can be estimated using ground-state calculations in two complementary frameworks, both based on the analysis of singularities of the bond-energy density [60]. This bond-energy density is the first derivative of the ground-state energy with respect to the random-field strength [34, 35]. The derivative of the sample averaged quantity with respect to then gives the second derivative with respect to of the total energy and thus the sample-averaged specific heat . The singularities in can also be studied by computing the singular part of , as is just the integral of with respect to . Thus, one may estimate by studying the behavior of at [34] , via the scaling form
[TABLE]
where , , and are non-universal constants, and is the universal corrections-to-scaling exponent.
Of course, the use of equation (4) for the application of standard finite-size scaling methods requires an a priori knowledge of the exact value of the critical random-field strength [see also the analysis below in figures 4 and 5]. Although we currently have at hand such high-accuracy estimates of the critical fields for both types of the random-field distributions under study [27], we start our analysis with an alternative to this approach. In particular, we implement a three lattice-size variant of the original quotients method [61], also known as phenomenological renormalization [62, 63, 64] that has been described in detail in reference [26] and already successfully applied to the [23] and [25] models. The main idea in this perspective, given that , is the elimination of the non-divergent background term in equation (4) by considering three lattice sizes in the following sequence: [see figure 2 for an instructive illustration of the three-lattice variant of the quotients method based on the crossings of ]. Taking the quotient of the differences at the crossings of the pairs and
[TABLE]
one obtains the following scaling formula for the bond-energy density [26]
[TABLE]
Our results for the effective exponent ratio as a function of – where is set to the 3D Ising value [39] – are shown in figure 3. The dashed line marks the estimate of the 3D Ising universality class, where we have used the values and [39]. A few comments are in order: (i) Clearly, there exist large corrections to scaling for the sequence of smaller sizes and that obscure the application of any finite-size scaling approach. (ii) The remaining data points [, , and ] do not allow for a safe extrapolation of the ratio to , although the general trend of the data appears to be on the right track and, in fact, joint polynomial fits with a shared constant term do approach the value but with a rather bad fitting quality. (iii) Larger system sizes would be needed to clarify this point, but are unfortunately out of reach with our current resources.
Guided by these qualitative results of the phenomenological-renormalization approach, we have performed, at a second stage, additional simulations at the critical points and of the Gaussian and Poissonian models, respectively [27]. In figures 4 and 5 we report on the finite-size scaling behavior of the bond-energy density at these critical points for the whole spectrum of system sizes studied, alongside with the resulting estimates for the ratio . In both panels the solid lines are fits of the form (4), where the different colors correspond to different fixed values of . Black curves correspond to the value of the 3D Ising universality class [39], whereas red curves to the value estimated in reference [27]. The fitting quality, measured in terms of /dof, where dof measures the number of degrees of freedom, and the minimum system size, , used in the fits are as follows: , for the Gaussian model (figure 4) and , for the Poissonian model (figure 5). Note that there was practically no variation in the fitting quality moving from down to [65]. Using now the estimate for the critical exponent of the correlation length, simple algebra and error propagation produces values for within the range . Taking an average over the values of obtained from the black curves with , we give our final estimate for the critical exponent to be
[TABLE]
This is compatible to the value obtained in reference [27] via the modified hyperscaling relation , where and are the corresponding anomalous dimensions of the connected and disconnected correlation functions [see equation (3)] and also agrees nicely with the 3D Ising universality benchmark [39].
As an additional consistency check of our results shown in figures 4 and 5, we depict in figure 6 the scaling behavior of the specific heat , obtained from the derivative of the bond-energy density with respect to the random-field strength , at the critical point. Note that the horizontal axis has been rescaled to (remember that as in the standard case ), and has been set to the value via and of the 3D Ising universality class [39]. As expected the data become rather noisy with increasing system size, forcing us to exclude from our fittings the larger system sizes and , where statistical errors are larger than . Although we illustrate for the benefit of the reader data for the complete spectrum of system sizes studied, the solid lines are simple linear fits within the range with a very good fitting quality indeed: and for the Gaussian and Poissonian models, respectively.
To summarize, using extensive numerical simulations at zero temperature we provided a high-precision estimate of the specific-heat’s critical exponent of the 5D RFIM. Our final result is fully consistent with the estimation coming from the modified hyperscaling relation given in reference [27], and also supports the recent results of reference [29] for the restoration of supersymmetry and dimensional reduction in the RFIM at . We close this contribution with figure 7 and an overview of the critical exponent of the RFIM at all physically relevant dimensions. Two sets of data points are shown, as outlined in the caption, corroborated by a graphical validation of the Rushbrooke relation in the corresponding inset. Whilst the collative results of figure 7 are reassuring and settle down previous controversies in the random-field problem originating from defective estimations of the critical exponent , for reasons of clarity we sould like to point out that the large error at stems from the joint fits of performed over several random-field distributions (including the double Gaussian distribution) and the large scaling corrections via [23, 24] – for further details and graphical explanations on this aspect we refer the interested reader to figures 6 and 7 of reference [23].
Acknowledgments
We acknowledge partial financial support from Ministerio de Economía, Industria y Competitividad (MINECO, Spain) through Grant No. FIS2015-65078-C2 and PGC2018-094684-B-C21, and from the European Research Council (ERC) under the European Union’s Horizon 2020 research and innovation program (Grant No. 694925).
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The reference list from the paper itself. Each links out to its DOI / PubMed record.
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