Graduation Year
2024
Document Type
Open Access Senior Thesis
Degree Name
Bachelor of Science
Department
Mathematics
Second Department
Physics
Reader 1
Weiqing Gu
Reader 2
Daniel Tamayo
Terms of Use & License Information
Rights Information
© 2024 Xiaobei (Emma) Zhang
Abstract
This thesis explores the connection between physics and machine learning by using Restricted Boltzmann Machines (RBMs) to study the thermodynamic properties of the Ising model. The Ising model is a simple but realistic model that captures the magnetic behavior of a system, where spins occupy a lattice of sites and different spin configurations correspond to different energies. The model exhibits phase transitions between ferromagnetic and paramagnetic phases as a function of temperature. RBMs are two-layered neural networks that can learn probability distributions over binary spins. The study generates 2D Ising model data at different temperatures using Monte Carlo simulations, including the Metropolis algorithm and the Wolff algorithm. RBMs are trained on this data and validated by studying the learned weights and filters. We then use the trained RBMs to generate new Ising configurations. The quality of the RBM-generated configurations is assessed by comparing their probability distributions to those of the original configurations using the Wasserstein distance, a measure from optimal transport theory. Interestingly, the Wasserstein distance between the generated and original configurations shows an unexpected trend, with lower values around the critical temperature and a sharp dip at �� = 2.0. This suggests that the RBM is able to capture important features of the Ising model’s thermodynamics, particularly near the phase transition. The next steps are to further investigate this finding, such as exploring the learned features in the RBM’s hidden layer and generating configurations with more hidden units. Overall, this work demonstrates a promising approach for connecting physics and machine learning to gain insights into complex systems.
Recommended Citation
Zhang, Xiaobei (Emma), "Probing the Ising Model’s Thermodynamics through Restricted Boltzmann Machines" (2024). HMC Senior Theses. 280.
https://scholarship.claremont.edu/hmc_theses/280
Included in
Computer Sciences Commons, Other Applied Mathematics Commons, Other Physics Commons, Statistical, Nonlinear, and Soft Matter Physics Commons