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A Pareto-optimal compositional energy-based model for sampling and optimization of protein sequences

Authors :
Tagasovska, Nataša
Frey, Nathan C.
Loukas, Andreas
Hötzel, Isidro
Lafrance-Vanasse, Julien
Kelly, Ryan Lewis
Wu, Yan
Rajpal, Arvind
Bonneau, Richard
Cho, Kyunghyun
Ra, Stephen
Gligorijević, Vladimir
Publication Year :
2022

Abstract

Deep generative models have emerged as a popular machine learning-based approach for inverse design problems in the life sciences. However, these problems often require sampling new designs that satisfy multiple properties of interest in addition to learning the data distribution. This multi-objective optimization becomes more challenging when properties are independent or orthogonal to each other. In this work, we propose a Pareto-compositional energy-based model (pcEBM), a framework that uses multiple gradient descent for sampling new designs that adhere to various constraints in optimizing distinct properties. We demonstrate its ability to learn non-convex Pareto fronts and generate sequences that simultaneously satisfy multiple desired properties across a series of real-world antibody design tasks.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.10838
Document Type :
Working Paper