544 research outputs found
Overlap synchronisation in multipartite random energy models
In a multipartite random energy model, made of a number of coupled GREMs, we
determine the joint law of the overlaps in terms of the ones of the single
GREMs. This provides the simplest example of the so-called overlap
synchronisation.Comment: 6 page
Legendre Duality of Spherical and Gaussian Spin Glasses
The classical result of concentration of the Gaussian measure on the sphere
in the limit of large dimension induces a natural duality between Gaussian and
spherical models of spin glass. We analyse the Legendre variational structure
linking the free energies of these two systems, in the spirit of the
equivalence of ensembles of statistical mechanics. Our analysis, combined with
the previous work [4], shows that such models are replica symmetric. Lastly, we
briefly discuss an application of our result to the study of the Gaussian
Hopfield model
Random Walk on Lattice with an Antisymmetric Perturbation in One Point
We study an homogeneous irreducible markovian random walk in a square lattice
of arbitrary dimension, with an antisymmetric perturbation acting only in one
point. We compute exactly spatial correction to the diffusive behaviour in the
asympotics of probability, in the spirit of local limit theorems for random
walks.Comment: This paper has been withdrawn by the author due to a error in the
proo
Pattern reconstruction with restricted Boltzmann machines
Restricted Boltzmann machines are energy models made of a visible and a
hidden layer. We identify an effective energy function describing the
zero-temperature landscape on the visible units and depending only on the tail
behaviour of the hidden layer prior distribution. Studying the location of the
local minima of such an energy function, we show that the ability of a
restricted Boltzmann machine to reconstruct a random pattern depends indeed
only on the tail of the hidden prior distribution. We find that hidden priors
with strictly super-Gaussian tails give only a logarithmic loss in pattern
retrieval, while an efficient retrieval is much harder with hidden units with
strictly sub-Gaussian tails; if the hidden prior has Gaussian tails, the
retrieval capability is determined by the number of hidden units (as in the
Hopfield model)
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