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Main Authors: Duan, Ruibo, Liu, Yuxin, Dong, Xinyao, Fan, Chenglin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.02594
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author Duan, Ruibo
Liu, Yuxin
Dong, Xinyao
Fan, Chenglin
author_facet Duan, Ruibo
Liu, Yuxin
Dong, Xinyao
Fan, Chenglin
contents Generating challenging instances is crucial for the evaluation and advancement of combinatorial optimization solvers. In this work, we introduce EALG (Evolutionary Adversarial Generation of Language Model-Guided Generators), a novel framework that automates the co-evolution of optimization problem instances and their corresponding heuristic solvers using large language models (LLMs). EALG leverages a mutation-based adversarial approach that dynamically evolves instance generation procedures to create increasingly difficult problems, while simultaneously synthesizing adaptive heuristic algorithms through interactions with LLMs guided by algorithmic structure. Unlike existing approaches that focus solely on static benchmark creation or manual solver design, EALG provides a seamless pipeline from instance generation to solver synthesis. Experimental results demonstrate that EALG generates significantly harder instances than current benchmarks, and its synthesized solvers generalize effectively across a broad spectrum of combinatorial tasks. This work explores a new paradigm for combinatorial optimization that integrates instance generation with solver design, resulting in state-of-the-art performance.
format Preprint
id arxiv_https___arxiv_org_abs_2506_02594
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle EALG: Evolutionary Adversarial Generation of Language Model-Guided Generators for Combinatorial Optimization
Duan, Ruibo
Liu, Yuxin
Dong, Xinyao
Fan, Chenglin
Artificial Intelligence
Generating challenging instances is crucial for the evaluation and advancement of combinatorial optimization solvers. In this work, we introduce EALG (Evolutionary Adversarial Generation of Language Model-Guided Generators), a novel framework that automates the co-evolution of optimization problem instances and their corresponding heuristic solvers using large language models (LLMs). EALG leverages a mutation-based adversarial approach that dynamically evolves instance generation procedures to create increasingly difficult problems, while simultaneously synthesizing adaptive heuristic algorithms through interactions with LLMs guided by algorithmic structure. Unlike existing approaches that focus solely on static benchmark creation or manual solver design, EALG provides a seamless pipeline from instance generation to solver synthesis. Experimental results demonstrate that EALG generates significantly harder instances than current benchmarks, and its synthesized solvers generalize effectively across a broad spectrum of combinatorial tasks. This work explores a new paradigm for combinatorial optimization that integrates instance generation with solver design, resulting in state-of-the-art performance.
title EALG: Evolutionary Adversarial Generation of Language Model-Guided Generators for Combinatorial Optimization
topic Artificial Intelligence
url https://arxiv.org/abs/2506.02594