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Main Authors: Kiet, Nguyen Viet Tuan, Pham, Bui Dinh, Van Tung, Dao, Dao, Tran Cong, Binh, Huynh Thi Thanh
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.06123
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author Kiet, Nguyen Viet Tuan
Pham, Bui Dinh
Van Tung, Dao
Dao, Tran Cong
Binh, Huynh Thi Thanh
author_facet Kiet, Nguyen Viet Tuan
Pham, Bui Dinh
Van Tung, Dao
Dao, Tran Cong
Binh, Huynh Thi Thanh
contents Large language models (LLMs) have recently advanced automatic heuristic design (AHD) for combinatorial optimization (CO), where candidate heuristics are iteratively proposed, evaluated, and refined. Most existing approaches search over executable programs and distill insights from execution feedback to guide later iterations. Because this process moves from low-level implementations to high-level principles, we refer to it as a bottom-up paradigm. We argue that this view is incomplete and introduce a complementary top-down perspective: knowledge becomes the primary search object and code merely instantiates and tests it, making what is learned explicit and reusable across problems and trajectories. We formalize this shift through a statistical-learning view that exposes a distortion--compression trade-off, and instantiate it in both population-based and tree-based AHD frameworks. Across CO and tasks beyond it, knowledge-first search improves discovery efficiency, transfer, and generalization, often outperforming code-centric pipelines, while combining both strategies yields further gains. Our results suggest that progress in AHD depends on iteratively constructing and evolving interpretable hypotheses that retain value beyond a single search trajectory.
format Preprint
id arxiv_https___arxiv_org_abs_2605_06123
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Back to the Beginning of Heuristic Design: Bridging Code and Knowledge with LLMs
Kiet, Nguyen Viet Tuan
Pham, Bui Dinh
Van Tung, Dao
Dao, Tran Cong
Binh, Huynh Thi Thanh
Artificial Intelligence
Large language models (LLMs) have recently advanced automatic heuristic design (AHD) for combinatorial optimization (CO), where candidate heuristics are iteratively proposed, evaluated, and refined. Most existing approaches search over executable programs and distill insights from execution feedback to guide later iterations. Because this process moves from low-level implementations to high-level principles, we refer to it as a bottom-up paradigm. We argue that this view is incomplete and introduce a complementary top-down perspective: knowledge becomes the primary search object and code merely instantiates and tests it, making what is learned explicit and reusable across problems and trajectories. We formalize this shift through a statistical-learning view that exposes a distortion--compression trade-off, and instantiate it in both population-based and tree-based AHD frameworks. Across CO and tasks beyond it, knowledge-first search improves discovery efficiency, transfer, and generalization, often outperforming code-centric pipelines, while combining both strategies yields further gains. Our results suggest that progress in AHD depends on iteratively constructing and evolving interpretable hypotheses that retain value beyond a single search trajectory.
title Back to the Beginning of Heuristic Design: Bridging Code and Knowledge with LLMs
topic Artificial Intelligence
url https://arxiv.org/abs/2605.06123