Determination of the critical points for systems of directed percolation
class using machine learning
- URL: http://arxiv.org/abs/2307.10456v1
- Date: Wed, 19 Jul 2023 20:58:12 GMT
- Title: Determination of the critical points for systems of directed percolation
class using machine learning
- Authors: M. Ali Saif and Bassam M. Mughalles
- Abstract summary: We use CNN and DBSCAN in order to determine the critical points for directed bond percolation (bond DP) model and Domany-Kinzel cellular universality (DK) model.
Our results from both algorithms show that, even for a very small values of lattice size, machine can predict the critical points accurately for both models.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Recently, machine learning algorithms have been used remarkably to study the
equilibrium phase transitions, however there are only a few works have been
done using this technique in the nonequilibrium phase transitions. In this
work, we use the supervised learning with the convolutional neural network
(CNN) algorithm and unsupervised learning with the density-based spatial
clustering of applications with noise (DBSCAN) algorithm to study the
nonequilibrium phase transition in two models. We use CNN and DBSCAN in order
to determine the critical points for directed bond percolation (bond DP) model
and Domany-Kinzel cellular automaton (DK) model. Both models have been proven
to have a nonequilibrium phase transition belongs to the directed percolation
(DP) universality class. In the case of supervised learning we train CNN using
the images which are generated from Monte Carlo simulations of directed bond
percolation. We use that trained CNN in studding the phase transition for the
two models. In the case of unsupervised learning, we train DBSCAN using the raw
data of Monte Carlo simulations. In this case, we retrain DBSCAN at each time
we change the model or lattice size. Our results from both algorithms show
that, even for a very small values of lattice size, machine can predict the
critical points accurately for both models. Finally, we mention to that, the
value of the critical point we find here for bond DP model using CNN or DBSCAN
is exactly the same value that has been found using transfer learning with a
domain adversarial neural network (DANN) algorithm.
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