Enhancing Quantum Federated Learning with Fisher Information-Based Optimization
Amandeep Singh Bhatia, Sabre Kais

TL;DR
This paper introduces a quantum federated learning algorithm that uses Fisher information to identify key parameters, improving model performance and robustness in decentralized quantum training scenarios.
Contribution
It proposes a novel Fisher information-based optimization method for quantum federated learning, enhancing parameter selection and model robustness.
Findings
Improved accuracy over traditional quantum federated averaging.
Enhanced robustness against data heterogeneity.
Effective parameter preservation during model aggregation.
Abstract
Federated Learning (FL) has become increasingly popular across different sectors, offering a way for clients to work together to train a global model without sharing sensitive data. It involves multiple rounds of communication between the global model and participating clients, which introduces several challenges like high communication costs, heterogeneous client data, prolonged processing times, and increased vulnerability to privacy threats. In recent years, the convergence of federated learning and parameterized quantum circuits has sparked significant research interest, with promising implications for fields such as healthcare and finance. By enabling decentralized training of quantum models, it allows clients or institutions to collaboratively enhance model performance and outcomes while preserving data privacy. Recognizing that Fisher information can quantify the amount of…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography
