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Fluctuation based interpretable analysis scheme for quantum many-body snapshots
Schlömer, Henning und Bohrdt, Annabelle (2023) Fluctuation based interpretable analysis scheme for quantum many-body snapshots. SciPost Physics 15 (3).Veröffentlichungsdatum dieses Volltextes: 16 Jul 2024 06:00
Artikel
DOI zum Zitieren dieses Dokuments: 10.5283/epub.58637
Zusammenfassung
Microscopically understanding and classifying phases of matter is at the heart of strongly-correlated quantum physics. With quantum simulations, genuine projective measurements (snapshots) of the many-body state can be taken, which include the full information of correlations in the system. The rise of deep neural networks has made it possible to routinely solve abstract processing and ...
Microscopically understanding and classifying phases of matter is at the heart of strongly-correlated quantum physics. With quantum simulations, genuine projective measurements (snapshots) of the many-body state can be taken, which include the full information of correlations in the system. The rise of deep neural networks has made it possible to routinely solve abstract processing and classification tasks of large datasets, which can act as a guiding hand for quantum data analysis. However, though proven to be successful in differentiating between different phases of matter, conventional neural networks mostly lack interpretability on a physical footing. Here, we combine confusion learning [1] with correlation convolutional neural networks [2], which yields fully interpretable phase detection in terms of correlation functions. In particular, we study thermodynamic properties of the 2D Heisenberg model, whereby the trained network is shown to pick up qualitative changes in the snapshots above and below a characteristic temperature where magnetic correlations become significantly long-range. We identify the full counting statistics of nearest neighbor spin correlations as the most important quantity for the decision process of the neural network, which go beyond averages of local observables. With access to the fluctuations of second-order correlations - which indirectly include contributions from higher order, long-range correlations - the network is able to detect changes of the specific heat and spin susceptibility, the latter being in analogy to magnetic properties of the pseudogap phase in high-temperature superconductors [3]. By combining the confusion learning scheme with transformer neural networks, our work opens new directions in interpretable quantum image processing being sensible to long-range order.
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Details
| Dokumentenart | Artikel | ||||
| Titel eines Journals oder einer Zeitschrift | SciPost Physics | ||||
| Verlag: | SCIPOST FOUNDATION | ||||
|---|---|---|---|---|---|
| Ort der Veröffentlichung: | AMSTERDAM | ||||
| Band: | 15 | ||||
| Nummer des Zeitschriftenheftes oder des Kapitels: | 3 | ||||
| Datum | 18 September 2023 | ||||
| Institutionen | Physik > Institut für Theoretische Physik | ||||
| Identifikationsnummer |
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| Stichwörter / Keywords | SPIN-1/2 HEISENBERG-ANTIFERROMAGNET; MAGNETIC-SUSCEPTIBILITY; PHASE-TRANSITIONS; HUBBARD-MODEL; MONTE-CARLO; NETWORKS; PHYSICS; | ||||
| Dewey-Dezimal-Klassifikation | 600 Technik, Medizin, angewandte Wissenschaften > 610 Medizin | ||||
| Status | Veröffentlicht | ||||
| Begutachtet | Ja, diese Version wurde begutachtet | ||||
| An der Universität Regensburg entstanden | Zum Teil | ||||
| URN der UB Regensburg | urn:nbn:de:bvb:355-epub-586374 | ||||
| Dokumenten-ID | 58637 |
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