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Sep 7 – 12, 2025
"Diament" Hotel
Europe/Warsaw timezone

Autoencoder based analytic continuation

Sep 8, 2025, 5:50 PM
20m
Chair: Tamaghna Hazra

Chair: Tamaghna Hazra

Contributed talk

Speaker

Maksymilian Kliczkowski (Wroclaw University of Science and Technology)

Description

The single particle Green's function provides valuable information on the momentum and energy-resolved spectral properties for a strongly correlated system. In large-scale numerical calculations using quantum Monte Carlo (QMC), dynamical mean field theory (DMFT), including cluster-DMFT, one usually obtains the Green's function in imaginary-time. The process of inverting a Laplace transform to obtain the spectral function in real-frequency is an ill-posed problem and forms the core of the analytic continuation problem. We propose to use a completely unsupervised autoencoder-type neural network to solve the analytic continuation problem. We introduce an encoder-decoder approach that, together with only minor physical assumptions, can extract a high-quality frequency response from the imaginary time domain. With a deeply tunable architecture, this method can, in principle, locate sharp features of spectral functions that might normally be lost using already well-established methods, such as maximum entropy (MaxEnt) methods. We demonstrate the strength of the autoencoder approach by applying it to QMC results of imaginary time Green's functions for a single-band Hubbard model. The proposed method is general and can also be applied to other ill-posed inverse problems.

Primary authors

Maciej Maska (Wrocław University of Science and Technology) Maksymilian Kliczkowski (Wroclaw University of Science and Technology) Prof. Mohit Randeria (Ohio State University) Prof. Nandini Trivedi (Ohio State University) Mr Sayantan Roy (Ohio State University) Prof. Thereza Paiva

Presentation materials

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