High Energy Physics - Lattice · Physics
Adding machine learning within Hamiltonians: Renormalization group transformations, symmetry breaking and restoration
Dimitrios Bachtis, Gert Aarts, Biagio Lucini
2021-02-17
Statistical Mechanics · Physics
Interpretable machine learning for inferring the phase boundaries in a nonequilibrium system
C. Casert, T. Vieijra, J. Nys, J. Ryckebusch
2019-02-18
Machine Learning · Computer Science
Adaptable Hamiltonian neural networks
Chen-Di Han, Bryan Glaz, Mulugeta Haile, Ying-Cheng Lai
2021-06-02
Artificial Intelligence · Computer Science
Interpretable machine learning models: a physics-based view
Ion Matei, Johan de Kleer, Christoforos Somarakis, Rahul Rai +1
2020-03-24
Machine Learning · Computer Science
On Learning what to Learn: heterogeneous observations of dynamics and establishing (possibly causal) relations among them
David W. Sroczynski, Felix Dietrich, Eleni D. Koronaki, Ronen Talmon +3
2024-06-12
Machine Learning · Computer Science
Separable Hamiltonian Neural Networks
Zi-Yu Khoo, Dawen Wu, Jonathan Sze Choong Low, Stéphane Bressan
2024-08-16
Machine Learning · Computer Science
Learning Neural Hamiltonian Dynamics: A Methodological Overview
Zhijie Chen, Mingquan Feng, Junchi Yan, Hongyuan Zha
2022-03-02
Other Condensed Matter · Physics
Extrapolating quantum observables with machine learning: Inferring multiple phase transitions from properties of a single phase
Rodrigo A. Vargas-Hernández, John Sous, Mona Berciu, Roman V. Krems
2019-04-26
Quantum Physics · Physics
Hamiltonian Learning using Machine Learning Models Trained with Continuous Measurements
Kris Tucker, Amit Kiran Rege, Conor Smith, Claire Monteleoni +1
2025-02-17
Quantum Physics · Physics
Hamiltonian Dynamics Learning: A Scalable Approach to Quantum Process Characterization
Yusen Wu, Yukun Zhang, Chuan Wang, Xiao Yuan
2025-04-11
Computational Physics · Physics
Hamiltonian neural networks for solving equations of motion
Marios Mattheakis, David Sondak, Akshunna S. Dogra, Pavlos Protopapas
2022-07-01
Strongly Correlated Electrons · Physics
Decoding conformal field theories: from supervised to unsupervised learning
En-Jui Kuo, Alireza Seif, Rex Lundgren, Seth Whitsitt +1
2021-07-13
Quantum Physics · Physics
Learning functions of Hamiltonians with Hamiltonian Fourier features
Yuto Morohoshi, Akimoto Nakayama, Hidetaka Manabe, Kosuke Mitarai
2025-05-09
Strongly Correlated Electrons · Physics
Correlator Convolutional Neural Networks: An Interpretable Architecture for Image-like Quantum Matter Data
Cole Miles, Annabelle Bohrdt, Ruihan Wu, Christie Chiu +6
2021-06-24
Machine Learning · Computer Science
Interpretable Set Functions
Andrew Cotter, Maya Gupta, Heinrich Jiang, James Muller +3
2018-06-04