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arxiv:2509.21058

SPREAD: Sampling-based Pareto front Refinement via Efficient Adaptive Diffusion

Published on Sep 25, 2025
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Abstract

SPREAD is a generative framework using Denoising Diffusion Probabilistic Models for multi-objective optimization that improves convergence speed and diversity through adaptive gradient updates and RBF-based repulsion.

AI-generated summary

Developing efficient multi-objective optimization methods to compute the Pareto set of optimal compromises between conflicting objectives remains a key challenge, especially for large-scale and expensive problems. To bridge this gap, we introduce SPREAD, a generative framework based on Denoising Diffusion Probabilistic Models (DDPMs). SPREAD first learns a conditional diffusion process over points sampled from the decision space and then, at each reverse diffusion step, refines candidates via a sampling scheme that uses an adaptive multiple gradient descent-inspired update for fast convergence alongside a Gaussian RBF-based repulsion term for diversity. Empirical results on multi-objective optimization benchmarks, including offline and Bayesian surrogate-based settings, show that SPREAD matches or exceeds leading baselines in efficiency, scalability, and Pareto front coverage.

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