Quantum variational algorithms are swamped with traps

Author:

Anschuetz Eric R.ORCID,Kiani Bobak T.ORCID

Abstract

AbstractOne of the most important properties of classical neural networks is how surprisingly trainable they are, though their training algorithms typically rely on optimizing complicated, nonconvex loss functions. Previous results have shown that unlike the case in classical neural networks, variational quantum models are often not trainable. The most studied phenomenon is the onset of barren plateaus in the training landscape of these quantum models, typically when the models are very deep. This focus on barren plateaus has made the phenomenon almost synonymous with the trainability of quantum models. Here, we show that barren plateaus are only a part of the story. We prove that a wide class of variational quantum models—which are shallow, and exhibit no barren plateaus—have only a superpolynomially small fraction of local minima within any constant energy from the global minimum, rendering these models untrainable if no good initial guess of the optimal parameters is known. We also study the trainability of variational quantum algorithms from a statistical query framework, and show that noisy optimization of a wide variety of quantum models is impossible with a sub-exponential number of queries. Finally, we numerically confirm our results on a variety of problem instances. Though we exclude a wide variety of quantum algorithms here, we give reason for optimism for certain classes of variational algorithms and discuss potential ways forward in showing the practical utility of such algorithms.

Funder

National Science Foundation

Publisher

Springer Science and Business Media LLC

Subject

General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry,Multidisciplinary

Reference59 articles.

1. Blum, A. et al. Weakly learning DNF and characterizing statistical query learning using Fourier analysis. In Proceedings of the Twenty-Sixth Annual ACM Symposium on Theory of Computing, STOC ’94 253–262 (Association for Computing Machinery, 1994).

2. Szörényi, B. Algorithmic Learning Theory (eds Gavaldà, R., Lugosi, G., Zeugmann, T. & Zilles, S.) 186–200 (Springer, 2009).

3. Goel, S., Gollakota, A. & Klivans, A. Statistical-query lower bounds via functional gradients. In Proceedings of the 34th International Conference on Neural Information Processing Systems (Curran Associates Inc., Red Hook, 2020).

4. Shalev-Shwartz, S., Shamir, O. & Shammah, S. Failures of gradient-based deep learning. In Proceedings of the 34th International Conference on Machine Learning - Volume 70, 3067–3075 (JMLR.org, 2017).

5. Farhi, E., Goldstone, J., Gutmann, S. & Zhou, L. The quantum approximate optimization algorithm and the Sherrington-Kirkpatrick model at infinite size. Quantum 6, 759 (2022).

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