Expressibility and trainability of parameterized analog quantum systems for machine learning applications
Jirawat Tangpanitanon, Supanut Thanasilp, Ninnat Dangniam,, Marc-Antoine Lemonde, Dimitris G. Angelakis

TL;DR
This paper explores how the interplay of external driving and disorder affects the expressibility and trainability of analog quantum systems for machine learning, proposing a protocol that balances quantum supremacy with effective training.
Contribution
It provides a detailed analysis of the relationship between thermalization, many-body localization, and trainability in analog quantum systems, introducing a protocol using MBL dynamics for improved machine learning applications.
Findings
Thermalized systems have high expressibility but poor trainability.
Many-body localized systems are more trainable but less expressive.
The proposed protocol achieves a balance, enabling effective training while maintaining quantum supremacy.
Abstract
Parameterized quantum evolution is the main ingredient in variational quantum algorithms for near-term quantum devices. In digital quantum computing, it has been shown that random parameterized quantum circuits are able to express complex distributions intractable by a classical computer, leading to the demonstration of quantum supremacy. However, their chaotic nature makes parameter optimization challenging in variational approaches. Evidence of similar classically-intractable expressibility has been recently demonstrated in analog quantum computing with driven many-body systems. A thorough investigation of trainability of such analog systems is yet to be performed. In this work, we investigate how the interplay between external driving and disorder in the system dictates the trainability and expressibility of interacting quantum systems. We show that if the system thermalizes, the…
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