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Jens Eisert

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On the expressivity of embedding quantum kernels

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Sep 25, 2023
Elies Gil-Fuster, Jens Eisert, Vedran Dunjko

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Potential and limitations of random Fourier features for dequantizing quantum machine learning

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Sep 20, 2023
Ryan Sweke, Erik Recio, Sofiene Jerbi, Elies Gil-Fuster, Bryce Fuller, Jens Eisert, Johannes Jakob Meyer

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Understanding quantum machine learning also requires rethinking generalization

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Jun 23, 2023
Elies Gil-Fuster, Jens Eisert, Carlos Bravo-Prieto

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On the average-case complexity of learning output distributions of quantum circuits

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May 09, 2023
Alexander Nietner, Marios Ioannou, Ryan Sweke, Richard Kueng, Jens Eisert, Marcel Hinsche, Jonas Haferkamp

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Towards provably efficient quantum algorithms for large-scale machine-learning models

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Mar 06, 2023
Junyu Liu, Minzhao Liu, Jin-Peng Liu, Ziyu Ye, Yuri Alexeev, Jens Eisert, Liang Jiang

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A super-polynomial quantum-classical separation for density modelling

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Oct 26, 2022
Niklas Pirnay, Ryan Sweke, Jens Eisert, Jean-Pierre Seifert

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Noise can be helpful for variational quantum algorithms

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Oct 13, 2022
Junyu Liu, Frederik Wilde, Antonio Anna Mele, Liang Jiang, Jens Eisert

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Scalably learning quantum many-body Hamiltonians from dynamical data

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Sep 28, 2022
Frederik Wilde, Augustine Kshetrimayum, Ingo Roth, Dominik Hangleiter, Ryan Sweke, Jens Eisert

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A single $T$-gate makes distribution learning hard

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Jul 07, 2022
Marcel Hinsche, Marios Ioannou, Alexander Nietner, Jonas Haferkamp, Yihui Quek, Dominik Hangleiter, Jean-Pierre Seifert, Jens Eisert, Ryan Sweke

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Classical surrogates for quantum learning models

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Jun 23, 2022
Franz J. Schreiber, Jens Eisert, Johannes Jakob Meyer

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