A new approach for clustering is proposed. This method is based on an analogy to a physical model; the ferromagnetic Potts model at thermal equilibrium is used as an analog computer for this hard optimization problem. We do not assume any structure of the underlying distribution of the data. Phase space of the Potts model is divided into three regions; ferromagnetic, super-paramagnetic and paramagnetic phases. The region of interest is that corresponding to the super-paramagnetic one, where domains of aligned spins appear. The range of temperatures where these structures are stable is indicated by a non-vanishing magnetic susceptibility. We use a very efficient Monte Carlo algorithm to measure the susceptibility and the spin spin correlatio...
In recent years Machine Learning has proved to be successful in many technological applications and ...
Normal factor graph duality offers new possibilities for Monte Carlo algorithms in graphical models....
Introduction. The study of the austenite magnetic state in steels has provided the mechanism of the ...
A new approach for clustering is proposed. This method is based on an analogy to a physical model; t...
We present a new approach to clustering, based on the physical properties of an inhomogeneous ferrom...
Many clustering methods, such as K-means, kernel K-means, and MNcut clustering, follow the same reci...
A cluster algorithm is presented for the simulation of the q-state Potts models in which the number ...
In this article we investigate a problem within Dempster-Shafer theory where 2^q - 1 pieces of evide...
For d ≥ 2 and all q≥ q0(d) we give an efficient algorithm to approximately sample from the q-state f...
A new cluster approximation which enables us to describe both the diluted Ising and Heisenberg spin ...
A general scheme for devising efficient cluster dynamics proposed in a previous paper [Phys. Rev. Le...
The Ising model, and other spin models, are conceptual paradigms often used by statistical Physicist...
Because of its complexity, the 3D Ising model has not been given an exact analytic solution so far, ...
The two-dimensional Potts Model with seven states under external field is studied using a cluster al...
Based on the Monte Carlo simulation, the magnetic properties of the clusters, e.g. magnetization, Cu...
In recent years Machine Learning has proved to be successful in many technological applications and ...
Normal factor graph duality offers new possibilities for Monte Carlo algorithms in graphical models....
Introduction. The study of the austenite magnetic state in steels has provided the mechanism of the ...
A new approach for clustering is proposed. This method is based on an analogy to a physical model; t...
We present a new approach to clustering, based on the physical properties of an inhomogeneous ferrom...
Many clustering methods, such as K-means, kernel K-means, and MNcut clustering, follow the same reci...
A cluster algorithm is presented for the simulation of the q-state Potts models in which the number ...
In this article we investigate a problem within Dempster-Shafer theory where 2^q - 1 pieces of evide...
For d ≥ 2 and all q≥ q0(d) we give an efficient algorithm to approximately sample from the q-state f...
A new cluster approximation which enables us to describe both the diluted Ising and Heisenberg spin ...
A general scheme for devising efficient cluster dynamics proposed in a previous paper [Phys. Rev. Le...
The Ising model, and other spin models, are conceptual paradigms often used by statistical Physicist...
Because of its complexity, the 3D Ising model has not been given an exact analytic solution so far, ...
The two-dimensional Potts Model with seven states under external field is studied using a cluster al...
Based on the Monte Carlo simulation, the magnetic properties of the clusters, e.g. magnetization, Cu...
In recent years Machine Learning has proved to be successful in many technological applications and ...
Normal factor graph duality offers new possibilities for Monte Carlo algorithms in graphical models....
Introduction. The study of the austenite magnetic state in steels has provided the mechanism of the ...