RetailBench: Evaluating Long-Horizon Autonomous Decision-Making and Strategy Stability of LLM Agents in Realistic Retail Environments
arXiv cs.AI / 3/18/2026
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Key Points
- RetailBench introduces a high-fidelity benchmark to evaluate long-horizon autonomous decision-making by LLM agents in realistic retail environments with stochastic demand and evolving external conditions.
- The paper proposes the Evolving Strategy & Execution framework, separating high-level strategic reasoning from low-level action execution to enable adaptive and interpretable strategy evolution over time.
- Experiments on eight state-of-the-art LLMs show the framework improves operational stability and efficiency compared with baselines, though performance declines as task complexity increases.
- The results reveal fundamental limitations of current LLMs for long-horizon, multi-factor decision-making, underscoring the need for further research in long-horizon planning under dynamic environments.
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