Quantum-Enhanced Processing with Tensor-Network Frontends for Privacy-Aware Federated Medical Diagnosis
Hiroshi Yamauchi, Anders Peter Kragh Dalskov, Hideaki Kawaguchi, Rodney Van Meter

TL;DR
This paper introduces a hybrid federated learning framework for medical image classification that leverages tensor-network compression, secure MPC aggregation, and quantum processing to enhance privacy and efficiency.
Contribution
It presents a novel architecture combining tensor-network frontends with quantum refinement, addressing communication overhead and quantum processing constraints in privacy-aware federated learning.
Findings
TTN+QEP combination offers the best performance balance.
Quantum processor stability improves with matched qubit count and latent dimension.
Tensor-network compression reduces communication costs and enables quantum processing.
Abstract
We propose a privacy-aware hybrid framework for federated medical image classification that combines tensor-network representation learning, MPC-secured aggregation, and post-aggregation quantum refinement. The framework is motivated by two practical constraints in privacy-aware federated learning: MPC can introduce substantial communication overhead, and direct quantum processing of high-dimensional medical images is unrealistic with a small number of qubits. To address both constraints within a single architecture, client-side tensor-network frontends, Matrix Product State (MPS), Tree Tensor Network (TTN), and Multi-scale Entanglement Renormalization Ansatz (MERA), compress local inputs into compact latent representations, after which a Quantum-Enhanced Processor (QEP) refines the aggregated latent feature through quantum-state embedding and observable-based readout. Experiments on…
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