🔥 AgenticSTS: A Bounded-Memory Testbed for Long-Horizon LLM Agents
📅 Published on Jul 2
🔗 Links:
• GitHub: https://github.com/huggingface
• arXiv: https://arxiv.org/abs/2607.02255
• PDF: https://arxiv.org/pdf/2607.02255
• Project Page: https://alayalab.github.io/AgenticSTS/
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📢 By: https://xn--r1a.website/PaperNexus
#AgenticSTS #LongHorizonLLMAgents #BoundedMemoryTestbed #LargeLanguageModelAgents #LLMMemoryComponents
💡 The paper introduces a new approach to studying long-horizon large language model agents, called AgenticSTS. The problem addressed is that current methods for analyzing memory components in these agents are limited, as they append past observations and reflections to every prompt, making it hard to isolate the effect of a single memory component. To solve this, the authors propose a bounded contract approach, where every decision is made from a fresh user message assembled by typed retrieval, with no raw cross-decision transcript appended. This allows for isolated analysis of memory components and demonstrates improved performance in complex decision-making tasks.
The method involves instantiating this contract in a closed-rule stochastic deck-building game, where runs require hundreds of tactical and strategic decisions. The authors create a testbed, called AgenticSTS, which includes a reproducible environment, frozen memory and skill snapshots, prompt records, and analysis scripts. This testbed allows for the study of how explicit memory layers shape long-horizon LLM-agent decisions.
The results show that the proposed approach leads to improved performance in the game, with a fixed-A0 ablation showing the largest observed difference when triggered strategic skills are enabled. The no-store baseline wins 3 out of 10 games, while adding the skill layer wins 6 out of 10 games. Although the comparison is directional rather than statistically decisive, the results demonstrate the effectiveness of the proposed approach. The authors also release a public online benchmark of frontier LLMs on the same game, which reports zero wins at the lowest difficulty across five configurations, highlighting the challenge of the task. Overall, the paper contributes a new methodology for studying long-horizon LLM agents and demonstrates its effectiveness in a complex decision-making task.
📅 Published on Jul 2
🔗 Links:
• GitHub: https://github.com/huggingface
• arXiv: https://arxiv.org/abs/2607.02255
• PDF: https://arxiv.org/pdf/2607.02255
• Project Page: https://alayalab.github.io/AgenticSTS/
━━━━━━━━━━━━━━━━━━━━━━━━
📢 By: https://xn--r1a.website/PaperNexus
#AgenticSTS #LongHorizonLLMAgents #BoundedMemoryTestbed #LargeLanguageModelAgents #LLMMemoryComponents
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