Search Results for author: Constance Beguier

Found 4 papers, 1 papers with code

SecureFedYJ: a safe feature Gaussianization protocol for Federated Learning

no code implementations4 Oct 2022 Tanguy Marchand, Boris Muzellec, Constance Beguier, Jean Ogier du Terrail, Mathieu Andreux

The Yeo-Johnson (YJ) transformation is a standard parametrized per-feature unidimensional transformation often used to Gaussianize features in machine learning.

Federated Learning

Differentially Private Federated Learning for Cancer Prediction

1 code implementation8 Jan 2021 Constance Beguier, Jean Ogier du Terrail, Iqraa Meah, Mathieu Andreux, Eric W. Tramel

Since 2014, the NIH funded iDASH (integrating Data for Analysis, Anonymization, SHaring) National Center for Biomedical Computing has hosted yearly competitions on the topic of private computing for genomic data.

Federated Learning

Siloed Federated Learning for Multi-Centric Histopathology Datasets

no code implementations17 Aug 2020 Mathieu Andreux, Jean Ogier du Terrail, Constance Beguier, Eric W. Tramel

While federated learning is a promising approach for training deep learning models over distributed sensitive datasets, it presents new challenges for machine learning, especially when applied in the medical domain where multi-centric data heterogeneity is common.

Deep Learning Domain Adaptation +2

Efficient Sparse Secure Aggregation for Federated Learning

no code implementations29 Jul 2020 Constance Beguier, Mathieu Andreux, Eric W. Tramel

Federated Learning enables one to jointly train a machine learning model across distributed clients holding sensitive datasets.

Federated Learning

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