Absence of Barren Plateaus in Quantum Convolutional Neural Networks
ORAL
Abstract
Quantum neural networks (QNNs) have generated excitement around the possibility of efficiently analyzing quantum data. But this excitement has been tempered by the existence of exponentially vanishing gradients, known as barren plateau landscapes, for many QNN architectures. Recently, Quantum Convolutional Neural Networks (QCNNs) have been proposed, involving a sequence of convolutional and pooling layers that reduce the number of qubits while preserving information about relevant data features. In this work, we rigorously analyze the gradient scaling for the parameters in the QCNN architecture. We find that the variance of the gradient vanishes no faster than polynomially, implying that QCNNs do not exhibit barren plateaus. This provides an analytical guarantee for the trainability of randomly initialized QCNNs, which singles out QCNNs as being trainable, unlike many other QNN architectures. To derive our results we introduce a novel graph-based method to compute expectation values over Haar-distributed unitaries, which will likely be useful in other contexts. Finally, we perform numerical simulations to verify our analytical results.
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Presenters
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Arthur Pesah
University College London
Authors
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Arthur Pesah
University College London
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Marco Cerezo de la Roca
Theoretical Division, Los Alamos National Laboratory, T-Division, Los Alamos National Laboratory, Los Alamos National Laboratory
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Samson Wang
Imperial College London
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Tyler Volkoff
T-Division, Los Alamos National Laboratory, Los Alamos National Laboratory
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Andrew Sornborger
Los Alamos National Laboratory
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Patrick Coles
Los Alamos National Laboratory, Theoretical Division, Los Alamos National Laboratory, T-Division, Los Alamos National Laboratory