Principal eigenstate classical shadows

Given many copies of an unknown quantum state , we consider the task of learning a classical description of its principal eigenstate. Namely, assuming that has an eigenstate with (unknown) eigenvalue , the goal is to learn a (classical shadows style) classical description of which can later be used to estimate expectation values for any in some class of observables. We consider the sample-complexity setting in which generating a copy of is expensive, but joint measurements on many copies of the state are possible. We present a protocol for this task scaling with the principal eigenvalue and show that it is optimal within a space of natural approaches, e.g., applying quantum state purification followed by a single-copy classical shadows scheme. Furthermore, when is sufficiently close to , the performance of our algorithm is optimal--matching the sample complexity for pure state classical shadows.
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