The content discusses the challenge of designing cost-effective swine diets that meet minimum nutritional requirements. Traditional approaches based on theoretical models and linear programming have limitations in incorporating zootechnical, environmental, and sustainability factors.
The authors propose using multi-objective Bayesian optimization (MOBO) as a promising alternative to address this complex problem. However, MOBO faces challenges in high-dimensional search spaces, leading to exploration predominantly at the boundaries.
To overcome this, the authors analyze a multi-objective regionalized Bayesian optimization (MORBO) strategy that splits the search space into regions to provide local candidates. The results indicate that the regionalized approach produces more diverse non-dominated solutions compared to standard MOBO. MORBO was also four times more effective in finding solutions that outperform those identified by a stochastic programming approach referenced in the literature.
The experiments also show that querying the algorithm to provide batches of candidate solutions per iteration can accelerate the optimization process without compromising the quality of the Pareto set approximation during the initial, most critical phase.
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by Gabr... às arxiv.org 09-20-2024
https://arxiv.org/pdf/2409.12919.pdfPerguntas Mais Profundas