Table-as-Search: Formulate Long-Horizon Agentic Information Seeking as Table Completion
Abstract
Table-as-Search framework reformulates information seeking tasks as table completion problems, improving long-horizon search robustness through structured state management.
Current Information Seeking (InfoSeeking) agents struggle to maintain focus and coherence during long-horizon exploration, as tracking search states, including planning procedure and massive search results, within one plain-text context is inherently fragile. To address this, we introduce Table-as-Search (TaS), a structured planning framework that reformulates the InfoSeeking task as a Table Completion task. TaS maps each query into a structured table schema maintained in an external database, where rows represent search candidates and columns denote constraints or required information. This table precisely manages the search states: filled cells strictly record the history and search results, while empty cells serve as an explicit search plan. Crucially, TaS unifies three distinct InfoSeeking tasks: Deep Search, Wide Search, and the challenging DeepWide Search. Extensive experiments demonstrate that TaS significantly outperforms numerous state-of-the-art baselines across three kinds of benchmarks, including multi-agent framework and commercial systems. Furthermore, our analysis validates the TaS's superior robustness in long-horizon InfoSeeking, alongside its efficiency, scalability and flexibility. Code and datasets are publicly released at https://github.com/AIDC-AI/Marco-Search-Agent.
Community
Table-as-Search is a production-ready agent framework designed to tackle deep and wide information seeking tasks that require both:
- ๐ Deep reasoning over multi-hop retrieval
- ๐ Wide-scale information collection across multiple entities
This framework significantly outperforms Single-Agent, Multi-Agent ReAct baselinse in challenging Deep and Wide Info-Seeking. The framework implements a hierarchical multi-agent architecture with specialized agents for different search strategies, making it suitable for real-world applications like market analysis, competitive intelligence, and business development research.
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