On Quantum Natural Policy Gradients
    
  
 
 
  
  
    
    
        On Quantum Natural Policy Gradients
    
  
No Thumbnail Available
      Files
Date
    
    
        2024
    
  
Authors
  Luís Paulo Santos
  Luís Soares Barbosa
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
    
    
        This article delves into the role of the quantum Fisher information matrix (FIM) in enhancing the performance of parameterized quantum circuit (PQC)-based reinforcement learning agents. While previous studies have highlighted the effectiveness of PQC-based policies preconditioned with the quantum FIM in contextual bandits, its impact in broader reinforcement learning contexts, such as Markov decision processes, is less clear. Through a detailed analysis of L & ouml;wner inequalities between quantum and classical FIMs, this study uncovers the nuanced distinctions and implications of using each type of FIM. Our results indicate that a PQC-based agent using the quantum FIM without additional insights typically incurs a larger approximation error and does not guarantee improved performance compared to the classical FIM. Empirical evaluations in classic control benchmarks suggest even though quantum FIM preconditioning outperforms standard gradient ascent, in general, it is not superior to classical FIM preconditioning.