April 5, 2024, 4:42 a.m. | Aditya Shankar, Hans Brouwer, Rihan Hai, Lydia Chen

cs.LG updates on arXiv.org arxiv.org

arXiv:2404.03299v1 Announce Type: new
Abstract: Synthetic tabular data is crucial for sharing and augmenting data across silos, especially for enterprises with proprietary data. However, existing synthesizers are designed for centrally stored data. Hence, they struggle with real-world scenarios where features are distributed across multiple silos, necessitating on-premise data storage. We introduce SiloFuse, a novel generative framework for high-quality synthesis from cross-silo tabular data. To ensure privacy, SiloFuse utilizes a distributed latent tabular diffusion architecture. Through autoencoders, latent representations are learned …

abstract arxiv cs.cr cs.db cs.dc cs.lg data data storage diffusion diffusion models distributed enterprises features however multiple on-premise proprietary storage struggle synthetic synthetic data tabular tabular data type world

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