Score: 2

Lost in the Maze: Overcoming Context Limitations in Long-Horizon Agentic Search

Published: October 21, 2025 | arXiv ID: 2510.18939v1

By: Howard Yen , Ashwin Paranjape , Mengzhou Xia and more

BigTech Affiliations: Princeton University

Potential Business Impact:

Helps computers search the internet for longer.

Business Areas:
Semantic Search Internet Services

Long-horizon agentic search requires iteratively exploring the web over long trajectories and synthesizing information across many sources, and is the foundation for enabling powerful applications like deep research systems. In this work, we show that popular agentic search frameworks struggle to scale to long trajectories primarily due to context limitations-they accumulate long, noisy content, hit context window and tool budgets, or stop early. Then, we introduce SLIM (Simple Lightweight Information Management), a simple framework that separates retrieval into distinct search and browse tools, and periodically summarizes the trajectory, keeping context concise while enabling longer, more focused searches. On long-horizon tasks, SLIM achieves comparable performance at substantially lower cost and with far fewer tool calls than strong open-source baselines across multiple base models. Specifically, with o3 as the base model, SLIM achieves 56% on BrowseComp and 31% on HLE, outperforming all open-source frameworks by 8 and 4 absolute points, respectively, while incurring 4-6x fewer tool calls. Finally, we release an automated fine-grained trajectory analysis pipeline and error taxonomy for characterizing long-horizon agentic search frameworks; SLIM exhibits fewer hallucinations than prior systems. We hope our analysis framework and simple tool design inform future long-horizon agents.

Country of Origin
🇺🇸 United States


Page Count
28 pages

Category
Computer Science:
Computation and Language