QUANT-PHLGOct 29, 2018

The Expressive Power of Parameterized Quantum Circuits

arXiv:1810.11922v196 citations
Originality Highly original
AI Analysis

This addresses the open problem of whether quantum circuits have better expressive power than classical neural networks for generative tasks, with potential applications in Bayesian and semi-supervised learning.

The paper proves that parameterized quantum circuits (PQCs) with a simple structure outperform any classical neural network for generative tasks, unless the polynomial hierarchy collapses, and shows that PQCs with ancillary qubits for post-selection have even stronger expressive power, with numerical experiments demonstrating performance on Bayesian learning.

Parameterized quantum circuits (PQCs) have been broadly used as a hybrid quantum-classical machine learning scheme to accomplish generative tasks. However, whether PQCs have better expressive power than classical generative neural networks, such as restricted or deep Boltzmann machines, remains an open issue. In this paper, we prove that PQCs with a simple structure already outperform any classical neural network for generative tasks, unless the polynomial hierarchy collapses. Our proof builds on known results from tensor networks and quantum circuits (in particular, instantaneous quantum polynomial circuits). In addition, PQCs equipped with ancillary qubits for post-selection have even stronger expressive power than those without post-selection. We employ them as an application for Bayesian learning, since it is possible to learn prior probabilities rather than assuming they are known. We expect that it will find many more applications in semi-supervised learning where prior distributions are normally assumed to be unknown. Lastly, we conduct several numerical experiments using the Rigetti Forest platform to demonstrate the performance of the proposed Bayesian quantum circuit.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes