Charles A Micchelli
Journal of Approximation Theory
Hybrid tensor networks (hTNs) offer a promising solution for encoding variational quantum states beyond the capabilities of efficient classical methods or noisy quantum computers alone. However, their practical usefulness and many operational aspects of hTN-based algorithms, like the optimization of hTNs, the generalization of standard contraction rules to an hybrid setting, and the design of application-oriented architectures have not been thoroughly investigated yet. In this work, we introduce a novel algorithm to perform ground-state optimizations with hybrid tree tensor networks (hTTNs), discussing its advantages and roadblocks, and identifying a set of promising applications. We benchmark our approach on two paradigmatic models, namely the Ising model at the critical point and the Toric-code Hamiltonian. In both cases, we successfully demonstrate that hTTNs can improve upon classical equivalents with equal bond dimension in the classical part.
Charles A Micchelli
Journal of Approximation Theory
George Markowsky
J. Math. Anal. Appl.
Guillaume Buthmann, Tomoya Sakai, et al.
ICASSP 2025
Donald Samuels, Ian Stobert
SPIE Photomask Technology + EUV Lithography 2007