Privacy-preserving machine learning with tensor networks
Alejandro Pozas-Kerstjens, Senaida Hern\'andez-Santana, Jos\'e Ram\'on, Pareja Monturiol, Marco Castrill\'on L\'opez, Giannicola Scarpa, Carlos E., Gonz\'alez-Guill\'en, David P\'erez-Garc\'ia

TL;DR
This paper demonstrates that tensor network architectures can be designed to be inherently privacy-preserving in machine learning, especially for sensitive data like medical records, by satisfying specific robustness conditions.
Contribution
It introduces a new canonical form for tensor networks that guarantees robustness against privacy vulnerabilities in machine learning models.
Findings
Tensor networks satisfy conditions for privacy robustness.
Models trained on medical data show reduced information leakage.
Tensor networks can maintain accuracy while ensuring privacy.
Abstract
Tensor networks, widely used for providing efficient representations of low-energy states of local quantum many-body systems, have been recently proposed as machine learning architectures which could present advantages with respect to traditional ones. In this work we show that tensor network architectures have especially prospective properties for privacy-preserving machine learning, which is important in tasks such as the processing of medical records. First, we describe a new privacy vulnerability that is present in feedforward neural networks, illustrating it in synthetic and real-world datasets. Then, we develop well-defined conditions to guarantee robustness to such vulnerability, which involve the characterization of models equivalent under gauge symmetry. We rigorously prove that such conditions are satisfied by tensor-network architectures. In doing so, we define a novel…
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Taxonomy
TopicsQuantum many-body systems · Quantum, superfluid, helium dynamics · Quantum and electron transport phenomena
