State estimation with quantum extreme learning machines beyond the scrambling time
Quantum extreme learning machines (QELMs) leverage untrained quantum dynamics to efficiently process information encoded in input quantum states, avoiding the high computational cost of training more complicated nonlinear models. On the other hand, quantum information scrambling (QIS) quantifies how...
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Zusammenfassung: | Quantum extreme learning machines (QELMs) leverage untrained quantum dynamics
to efficiently process information encoded in input quantum states, avoiding
the high computational cost of training more complicated nonlinear models. On
the other hand, quantum information scrambling (QIS) quantifies how the spread
of quantum information into correlations makes it irretrievable from local
measurements. Here, we explore the tight relation between QIS and the
predictive power of QELMs. In particular, we show efficient state estimation is
possible even beyond the scrambling time, for many different types of dynamics
-- in fact, we show that in all the cases we studied, the reconstruction
efficiency at long interaction times matches the optimal one offered by random
global unitary dynamics. These results offer promising venues for robust
experimental QELM-based state estimation protocols, as well as providing novel
insights into the nature of QIS from a state estimation perspective. |
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DOI: | 10.48550/arxiv.2409.06782 |