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Research PaperResearchia:202602.13050[Data Science > Machine Learning]

The Offline-Frontier Shift: Diagnosing Distributional Limits in Generative Multi-Objective Optimization

Stephanie Holly

Abstract

Offline multi-objective optimization (MOO) aims to recover Pareto-optimal designs given a finite, static dataset. Recent generative approaches, including diffusion models, show strong performance under hypervolume, yet their behavior under other established MOO metrics is less understood. We show that generative methods systematically underperform evolutionary alternatives with respect to other metrics, such as generational distance. We relate this failure mode to the offline-frontier shift, i.e., the displacement of the offline dataset from the Pareto front, which acts as a fundamental limitation in offline MOO. We argue that overcoming this limitation requires out-of-distribution sampling in objective space (via an integral probability metric) and empirically observe that generative methods remain conservatively close to the offline objective distribution. Our results position offline MOO as a distribution-shift--limited problem and provide a diagnostic lens for understanding when and why generative optimization methods fail.


Source: arXiv:2602.11126v1 - http://arxiv.org/abs/2602.11126v1 PDF: https://arxiv.org/pdf/2602.11126v1 Original Link: http://arxiv.org/abs/2602.11126v1

Submission:2/13/2026
Comments:0 comments
Subjects:Machine Learning; Data Science
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arXiv: This paper is hosted on arXiv, an open-access repository
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