Search Results for author: Marcel Hinsche

Found 5 papers, 0 papers with code

Classical Verification of Quantum Learning

no code implementations8 Jun 2023 Matthias C. Caro, Marcel Hinsche, Marios Ioannou, Alexander Nietner, Ryan Sweke

Finally, we showcase two general scenarios in learning and verification in which quantum mixture-of-superpositions examples do not lead to sample complexity improvements over classical data.

Sparse Learning

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

no code implementations9 May 2023 Alexander Nietner, Marios Ioannou, Ryan Sweke, Richard Kueng, Jens Eisert, Marcel Hinsche, Jonas Haferkamp

In this work, we show that learning the output distributions of brickwork random quantum circuits is average-case hard in the statistical query model.

A single $T$-gate makes distribution learning hard

no code implementations7 Jul 2022 Marcel Hinsche, Marios Ioannou, Alexander Nietner, Jonas Haferkamp, Yihui Quek, Dominik Hangleiter, Jean-Pierre Seifert, Jens Eisert, Ryan Sweke

We first show that the generative modelling problem associated with depth $d=n^{\Omega(1)}$ local quantum circuits is hard for any learning algorithm, classical or quantum.

Quantum Machine Learning

Learnability of the output distributions of local quantum circuits

no code implementations11 Oct 2021 Marcel Hinsche, Marios Ioannou, Alexander Nietner, Jonas Haferkamp, Yihui Quek, Dominik Hangleiter, Jean-Pierre Seifert, Jens Eisert, Ryan Sweke

As many practical generative modelling algorithms use statistical queries -- including those for training quantum circuit Born machines -- our result is broadly applicable and strongly limits the possibility of a meaningful quantum advantage for learning the output distributions of local quantum circuits.

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