CEAIDec 4, 2024

ParetoFlow: Guided Flows in Multi-Objective Optimization

arXiv:2412.03718v217 citationsh-index: 8ICLR
Originality Incremental advance
AI Analysis

This addresses the problem of efficiently generating optimal designs in complex real-world scenarios with multiple competing objectives, representing an incremental advance in generative modeling for offline MOO.

The paper tackles offline multi-objective optimization by proposing ParetoFlow, a method that uses flow matching with multi-objective predictor guidance and neighboring evolution to approximate the Pareto front, achieving state-of-the-art performance across various tasks.

In offline multi-objective optimization (MOO), we leverage an offline dataset of designs and their associated labels to simultaneously minimize multiple objectives. This setting more closely mirrors complex real-world problems compared to single-objective optimization. Recent works mainly employ evolutionary algorithms and Bayesian optimization, with limited attention given to the generative modeling capabilities inherent in such data. In this study, we explore generative modeling in offline MOO through flow matching, noted for its effectiveness and efficiency. We introduce ParetoFlow, specifically designed to guide flow sampling to approximate the Pareto front. Traditional predictor (classifier) guidance is inadequate for this purpose because it models only a single objective. In response, we propose a multi-objective predictor guidance module that assigns each sample a weight vector, representing a weighted distribution across multiple objective predictions. A local filtering scheme is introduced to address non-convex Pareto fronts. These weights uniformly cover the entire objective space, effectively directing sample generation towards the Pareto front. Since distributions with similar weights tend to generate similar samples, we introduce a neighboring evolution module to foster knowledge sharing among neighboring distributions. This module generates offspring from these distributions, and selects the most promising one for the next iteration. Our method achieves state-of-the-art performance across various tasks.

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