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Trainability barriers and opportunities in quantum generative modeling

Manuel S. Rudolph, Sacha Lerch, Supanut Thanasilp, Oriel Kiss, Oxana Shaya, S. Vallecorsa, Michele Grossi, Zoë Holmes

2024npj Quantum Information34 citationsDOIOpen Access PDF

Abstract

Abstract Quantum generative models provide inherently efficient sampling strategies and thus show promise for achieving an advantage using quantum hardware. In this work, we investigate the barriers to the trainability of quantum generative models posed by barren plateaus and exponential loss concentration. We explore the interplay between explicit and implicit models and losses, and show that using quantum generative models with explicit losses such as the KL divergence leads to a new flavor of barren plateaus. In contrast, the implicit Maximum Mean Discrepancy loss can be viewed as the expectation value of an observable that is either low-bodied and provably trainable, or global and untrainable depending on the choice of kernel. In parallel, we find that solely low-bodied implicit losses cannot in general distinguish high-order correlations in the target data, while some quantum loss estimation strategies can. We validate our findings by comparing different loss functions for modeling data from High-Energy-Physics.

Topics & Concepts

Generative grammarQuantumComputer scienceQuantum computerTheoretical computer scienceArtificial intelligencePhysicsQuantum mechanicsQuantum Computing Algorithms and ArchitectureQuantum Mechanics and ApplicationsQuantum Information and Cryptography
Trainability barriers and opportunities in quantum generative modeling | Litcius