Robust Optimal Contribution Selection

Josh Fogg*, Jaime Ortiz Cuadros, Ivan Pocrnic, J.A. Julian Hall, Gregor Gorjanc

*Corresponding author for this work

Research output: Working paperPreprint

Abstract / Description of output

Optimal contribution selection (OCS) is a selective breeding method that manages the conversion of genetic variation into genetic gain to facilitate short-term competitiveness and long-term sustainability in breeding programmes. Traditional approaches to OCS do not account for uncertainty in input data, which is always present and challenges optimization and practical decision making. Here we use concepts from robust optimization to derive a robust OCS problem and develop two ways to solve the problem using either conic optimization or sequential quadratic programming. We have developed the open-source Python package 'robustocs' that leverages the Gurobi and HiGHS solvers to carry out these methods. Our testing shows favourable performance when solving the robust OCS problem using sequential quadratic programming and the HiGHS solver.
Original languageEnglish
PublisherarXiv.org
Pages1-10
Number of pages10
DOIs
Publication statusE-pub ahead of print - 3 Dec 2024

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