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Abstract
Continuing our analysis of quantum machine learning applied to our use-case
of malware detection, we investigate the potential of quantum convolutional
neural networks. More precisely, we propose a new architecture where data is
uploaded all along the quantum circuit. This allows us to use more features
from the data, hence giving to the algorithm more information, without having
to increase the number of qubits that we use for the quantum circuit. This
approach is motivated by the fact that we do not always have great amounts of
data, and that quantum computers are currently restricted in their number of
logical qubits.