Joint Surrogate Learning of Objectives, Constraints, and Sensitivities for Efficient Multi-objective Optimization of Neural Dynamical Systems
arXiv cs.LG / 2026/3/24
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要点
- The paper presents DMOSOPT, a scalable framework for efficiently optimizing neural dynamical systems with multiple objectives under many constraints that create a hard feasible/infeasible boundary with little or no usable gradient signal.
- DMOSOPT uses a single jointly learned surrogate model to approximate both the objective landscape and the feasibility boundary, enabling a unified gradient that simultaneously improves objective values and increases constraint satisfaction.
- The approach also extracts partial derivatives from the surrogate to estimate per-parameter sensitivities, supporting more targeted and efficient exploration of high-dimensional parameter spaces.
- Experiments span from single-cell dynamics to population-level neural network activity, including staged validation across an end-to-end neural circuit modeling workflow.
- The authors report that DMOSOPT achieves efficient optimization at supercomputing scale with substantially fewer evaluations, and note the method is generally applicable to constrained multi-objective optimization beyond computational neuroscience.
