QUANT-PHCCLGOct 25, 2018

Sample Efficient Algorithms for Learning Quantum Channels in PAC Model and the Approximate State Discrimination Problem

arXiv:1810.10938v340 citations
Originality Highly original
AI Analysis

This work addresses the problem of efficiently learning quantum processes and states for researchers in quantum computing and machine learning, providing foundational theoretical results with potential broad impact.

The authors generalized the PAC learning model to quantum processes, defining PAC learning quantum process and its special case approximate state discrimination, and derived sample complexity bounds, showing polynomial sample efficiency for learning polynomial-sized quantum circuits and exponential improvement over full state tomography for exponential-sized concept classes.

We generalize the PAC (probably approximately correct) learning model to the quantum world by generalizing the concepts from classical functions to quantum processes, defining the problem of \emph{PAC learning quantum process}, and study its sample complexity. In the problem of PAC learning quantum process, we want to learn an $ε$-approximate of an unknown quantum process $c^*$ from a known finite concept class $C$ with probability $1-δ$ using samples $\{(x_1,c^*(x_1)),(x_2,c^*(x_2)),\dots\}$, where $\{x_1,x_2, \dots\}$ are computational basis states sampled from an unknown distribution $D$ and $\{c^*(x_1),c^*(x_2),\dots\}$ are the (possibly mixed) quantum states outputted by $c^*$. The special case of PAC-learning quantum process under constant input reduces to a natural problem which we named as approximate state discrimination, where we are given copies of an unknown quantum state $c^*$ from an known finite set $C$, and we want to learn with probability $1-δ$ an $ε$-approximate of $c^*$ with as few copies of $c^*$ as possible. We show that the problem of PAC learning quantum process can be solved with $$O\left(\frac{\log|C| + \log(1/ δ)} { ε^2}\right)$$ samples when the outputs are pure states and $$O\left(\frac{\log^3 |C|(\log |C|+\log(1/ δ))} { ε^2}\right)$$ samples if the outputs can be mixed. Some implications of our results are that we can PAC-learn a polynomial sized quantum circuit in polynomial samples and approximate state discrimination can be solved in polynomial samples even when concept class size $|C|$ is exponential in the number of qubits, an exponentially improvement over a full state tomography.

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