Construction of Hamiltonians by supervised learning of energy spectra
ORAL
Abstract
Handling the large number of degrees of freedom with proper approximations, namely the construction of the effective Hamiltonian is at the heart of the (condensed matter) physics. Here we propose a simple scheme of constructing Hamiltonians from a given energy spectrum [1]. The sparse nature of the physical Hamiltonians allows us to formulate this as a solvable supervised learning problem. Taking a simple model of correlated electron systems, we demonstrate the data-driven construction of its low-energy effective model. We present potential applications for the construction of entanglement Hamiltonians and materials discovery through the construction of parent Hamiltonians from effective models of topological matters. [1]H.Fujita et.al., Phys. Rev. B 97, 075114 (2018).
*H. F. and Y. O. N are supported by Advanced Leading Graduate Course for Photon Science (ALPS) of Japan Society for the Promotion of Science (JSPS). The works of H. F., Y. O. N., and S. S are supported by JSPS KAKENHI Grant-in-Aid for JSPS Fellows Grant No. JP16J04752, No. JP16J01135, and No. JP15J11250, respectively. The work of M. O. is supported in part by JSPS KAKENHI Grant No. 16K05469.
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Presenters
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Sho Sugiura
- Physics, Harvard University