4,847 research outputs found
Phase separation in optical lattices in a spin-dependent external potential
We investigate the phase separation in one-dimensional Fermi gases on optical
lattices. The density distributions and the magnetization are calculated by
means of density-matrix renormalization method. The phase separation between
spin-up and spin-down atoms is induced by the interplay of the spin-dependent
harmonic confinement and the strong repulsive interaction between
intercomponent fermions. We find the existence of a critical repulsive
interaction strength above which the phase separation evolves. By increasing
the trap imbalance, the composite phase of Mott-insulating core is changed into
the one of ferromagnetic insulating core, which is incompressible and
originates from the Pauli exclusion principle.Comment: 6 pages, 7 figure
Correlation-Compressed Direct Coupling Analysis
Learning Ising or Potts models from data has become an important topic in
statistical physics and computational biology, with applications to predictions
of structural contacts in proteins and other areas of biological data analysis.
The corresponding inference problems are challenging since the normalization
constant (partition function) of the Ising/Potts distributions cannot be
computed efficiently on large instances. Different ways to address this issue
have hence given size to a substantial methodological literature. In this paper
we investigate how these methods could be used on much larger datasets than
studied previously. We focus on a central aspect, that in practice these
inference problems are almost always severely under-sampled, and the
operational result is almost always a small set of leading (largest)
predictions. We therefore explore an approach where the data is pre-filtered
based on empirical correlations, which can be computed directly even for very
large problems. Inference is only used on the much smaller instance in a
subsequent step of the analysis. We show that in several relevant model classes
such a combined approach gives results of almost the same quality as the
computationally much more demanding inference on the whole dataset. We also
show that results on whole-genome epistatic couplings that were obtained in a
recent computation-intensive study can be retrieved by the new approach. The
method of this paper hence opens up the possibility to learn parameters
describing pair-wise dependencies in whole genomes in a computationally
feasible and expedient manner.Comment: 15 pages, including 11 figure
- …