15-19 September 2025
REAL JARDÍN BOTÁNICO
Europe/Madrid timezone
As part of the International Year of Quantum Science and Technology, the workshop Entangle This VI will bring together experts at the forefront of quantum theory and experiment. It is organized by the Quantum groups at IFT and IFF.

Tensorization of neural networks for improved privacy and interpretability

Not scheduled
2h
REAL JARDÍN BOTÁNICO

REAL JARDÍN BOTÁNICO

Plaza Murillo, 2, Retiro, 28014 Madrid, Spain

Description

We present a tensorization algorithm for constructing tensor train/matrix product state (MPS) representations of functions, drawing on sketching and cross interpolation ideas. The method only requires black-box access to the target function and a small set of sample points defining the domain of interest. Thus, it is particularly well-suited for machine learning models, where the domain of interest is naturally defined by the training dataset. We show that this approach can be used to enhance the privacy and interpretability of neural network models. Specifically, we apply our decomposition to (i) obfuscate neural networks whose parameters encode patterns tied to the training data distribution, and (ii) estimate topological phases of matter that are easily accessible from the MPS representation. Additionally, we show that this tensorization can serve as an efficient initialization method for optimizing MPS in general settings, and that, for model compression, our algorithm achieves a superior trade-off between memory and time complexity compared to conventional tensorization methods of neural networks.

arXiv pre-print: https://arxiv.org/abs/2501.06300

Primary authors

Mr. José Ramón Pareja Monturiol (Instituto de Ciencias Matemáticas / Universidad Complutense de Madrid) Dr. Alejandro Pozas-Kerstjens (University of Geneva) Prof. David Pérez-García (Universidad Complutense de Madrid / Instituto de Ciencias Matemáticas)

Presentation Materials

There are no materials yet.
Your browser is out of date!

Update your browser to view this website correctly. Update my browser now

×