Publication | Open Access
Machine learning for many-body physics: The case of the Anderson impurity model
135
Citations
30
References
2014
Year
Legendre PolynomialsEngineeringComputational ChemistryComputational MechanicsStatistical Field TheoryPhysic Aware Machine LearningQuantum Machine LearningQuantum ScienceTraining SetPhysicsQuantum Field TheoryQuantum ChemistryNatural SciencesApplied PhysicsCondensed Matter PhysicsMany-body PhysicsNuclear Many-body PhysicsTheoretical PredictionAnderson Impurity ModelMany-body Problem
Machine learning methods are applied to finding the Green's function of the Anderson impurity model, a basic model system of quantum many-body condensed-matter physics. Different methods of parametrizing the Green's function are investigated; a representation in terms of Legendre polynomials is found to be superior due to its limited number of coefficients and its applicability to state of the art methods of solution. The dependence of the errors on the size of the training set is determined. The results indicate that a machine learning approach to dynamical mean-field theory may be feasible.
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