2024
DOI: 10.1101/2024.08.07.607012
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Latent generative modeling of long genetic sequences with GANs

Antoine Szatkownik,
Cyril Furtlehner,
Guillaume Charpiat
et al.

Abstract: Synthetic data generation via generative modeling has recently become a prominent research field in genomics, with applications ranging from functional sequence design to high-quality, privacy-preserving artificial in silico genomes. Following a body of work on Artificial Genomes (AGs) created via various generative models trained with raw genomic input, we propose a conceptually different approach to address the issues of scalability and complexity of genomic data generation in very high dimensions. Our metho… Show more

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Cited by 2 publications
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