Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

EoH-S: Evolution of Heuristic Set using LLMs for Automated Heuristic Design

About

Automated Heuristic Design (AHD) using Large Language Models (LLMs) has achieved notable success in recent years. Despite the effectiveness of existing approaches, they only design a single heuristic to serve all problem instances, often inducing poor generalization across different distributions or settings. To address this issue, we propose Automated Heuristic Set Design (AHSD), a new formulation for LLM-driven AHD. The aim of AHSD is to automatically generate a small-sized complementary heuristic set to serve diverse problem instances, such that each problem instance could be optimized by at least one heuristic in this set. We show that the objective function of AHSD is monotone and supermodular. Then, we propose Evolution of Heuristic Set (EoH-S) to apply the AHSD formulation for LLM-driven AHD. With two novel mechanisms of complementary population management and complementary-aware memetic search, EoH-S could effectively generate a set of high-quality and complementary heuristics. Comprehensive experimental results on three AHD tasks with diverse instances spanning various sizes and distributions demonstrate that EoH-S consistently outperforms existing state-of-the-art AHD methods and achieves up to 60\% performance improvements.

Fei Liu, Yilu Liu, Qingfu Zhang, Xialiang Tong, Mingxuan Yuan• 2025

Related benchmarks

TaskDatasetResultRank
Capacitated Vehicle Routing ProblemCVRPLib Set X
Average Optimality Gap19.1
114
Traveling Salesman ProblemUniform-TSP100
Optimality Gap1.85
41
Traveling Salesman ProblemTSP Clustered-100
Performance Gap3.23
18
Traveling Salesman ProblemTSP Barbell-100
Performance Gap (%)7.06
18
Traveling Salesman ProblemTSP Clustered-200
Performance Gap (%)6.59
18
Traveling Salesman ProblemTSP Diagonal-500
Performance Gap (%)8.64
18
Traveling Salesman ProblemTSP Clustered-500
Performance Gap (%)10.41
18
Traveling Salesman ProblemTSP Diagonal-100
Performance Gap (%)2.28
18
Traveling Salesman ProblemTSP Barbell-500
Performance Gap (%)13.04
18
Traveling Salesman ProblemTSP Barbell-200
Performance Gap10.32
18
Showing 10 of 23 rows

Other info

Follow for update