Negational symmetry of quantum neural networks for binary pattern classification
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https://hdl.handle.net/10037/27740Date
2022-04-27Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Although quantum neural networks (QNNs) have shown promising results in solving simple machine
learning tasks recently, the behavior of QNNs in binary pattern classification is still underexplored. In
this work, we find that QNNs have an Achilles’ heel in binary pattern classification. To illustrate this
point, we provide a theoretical insight into the properties of QNNs by presenting and analyzing a new
form of symmetry embedded in a family of QNNs with full entanglement, which we term negational symmetry. Due to negational symmetry, QNNs can not differentiate between a quantum binary signal and its
negational counterpart. We empirically evaluate the negational symmetry of QNNs in binary pattern classification tasks using Google’s quantum computing framework. Both theoretical and experimental results
suggest that negational symmetry is a fundamental property of QNNs, which is not shared by classical
models. Our findings also imply that negational symmetry is a double-edged sword in practical quantum
applications.
Publisher
ElsevierCitation
Dong, Kampffmeyer, Voiculescu, Xing. Negational symmetry of quantum neural networks for binary pattern classification. Pattern Recognition. 2022;129Metadata
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