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The Art of Being Difficult: Combining Human and AI Strengths to Find Adversarial Instances for Heuristics

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We demonstrate the power of human-LLM collaboration in tackling open problems in theoretical computer science. Focusing on combinatorial optimization, we refine outputs from the FunSearch algorithm [Romera-Paredes et al., Nature 2023] to derive state-of-the-art lower bounds for standard heuristics. Specifically, we target the generation of adversarial instances where these heuristics perform poorly. By iterating on FunSearch's outputs, we identify improved constructions for hierarchical $k$-median clustering, bin packing, the knapsack problem, and a generalization of Lov\'asz's gasoline problem - some of these have not seen much improvement for over a decade, despite intermittent attention. These results illustrate how expert oversight can effectively extrapolate algorithmic insights from LLM-based evolutionary methods to break long-standing barriers. Our findings demonstrate that while LLMs provide critical initial patterns, human expertise is essential for transforming these patterns into mathematically rigorous and insightful constructions. This work highlights that LLMs are a strong collaborative tool in mathematics and computer science research.

Henri Nikoleit, Ankit Anand, Anurag Murty Naredla, Heiko R\"oglin• 2026

Related benchmarks

TaskDatasetResultRank
Adversarial Instance Generationk-median
Approx. Ratio Lower Bound1.618
4
Adversarial Instance GenerationGasoline
Approx Ratio Lower Bound4.65
4
Adversarial Instance GenerationBin-Packing
Approx Ratio LB1.5
4
Adversarial Instance GenerationKnapsack--
3
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