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Several architectures have been proposed for quantum neural networks (QNNs), with the goal of efficiently performing machine learning tasks on quantum data. Rigorous scaling results are urgently needed for specific QNN constructions to understand which, if any, will be trainable at a large scale. Here, we analyze the gradient scaling (and hence the trainability) for a recently proposed architecture that we call dissipative QNNs (DQNNs), where the input qubits of each layer are discarded at the layer's output. We find that DQNNs can exhibit barren plateaus, i.e., gradients that vanish exponentially in the number of qubits. Moreover, we provide quantitative bounds on the scaling of the gradient for DQNNs under different conditions, such as different cost functions and circuit depths, and show that trainability is not always guaranteed. Our work represents the first rigorous analysis of the scalability of a perceptron-based QNN.
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Sharma et al. (Fri,) studied this question.
synapsesocial.com/papers/6a20cf6d8ff9f23497937fd7 — DOI: https://doi.org/10.1103/physrevlett.128.180505
Kunal Sharma
IBM (United States)
M. Cerezo
Los Alamos National Laboratory
Łukasz Cincio
Oak Ridge National Laboratory
Physical Review Letters
Los Alamos National Laboratory
Louisiana State University
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