GraphSearch: Agentic Search-Augmented Reasoning for Zero-Shot Graph Learning
- URL: http://arxiv.org/abs/2601.08621v1
- Date: Tue, 13 Jan 2026 15:00:57 GMT
- Title: GraphSearch: Agentic Search-Augmented Reasoning for Zero-Shot Graph Learning
- Authors: Jiajin Liu, Yuanfu Sun, Dongzhe Fan, Qiaoyu Tan,
- Abstract summary: GraphSearch is a framework that extends search-augmented reasoning to graph learning.<n>It disentangles search space (e.g., 1-hop, multi-hop, or global neighbors) from semantic queries.<n>It sets state-of-the-art results in zero-shot node classification and link prediction.
- Score: 9.147800129236918
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recent advances in search-augmented large reasoning models (LRMs) enable the retrieval of external knowledge to reduce hallucinations in multistep reasoning. However, their ability to operate on graph-structured data, prevalent in domains such as e-commerce, social networks, and scientific citations, remains underexplored. Unlike plain text corpora, graphs encode rich topological signals that connect related entities and can serve as valuable priors for retrieval, enabling more targeted search and improved reasoning efficiency. Yet, effectively leveraging such structure poses unique challenges, including the difficulty of generating graph-expressive queries and ensuring reliable retrieval that balances structural and semantic relevance. To address this gap, we introduce GraphSearch, the first framework that extends search-augmented reasoning to graph learning, enabling zero-shot graph learning without task-specific fine-tuning. GraphSearch combines a Graph-aware Query Planner, which disentangles search space (e.g., 1-hop, multi-hop, or global neighbors) from semantic queries, with a Graph-aware Retriever, which constructs candidate sets based on topology and ranks them using a hybrid scoring function. We further instantiate two traversal modes: GraphSearch-R, which recursively expands neighborhoods hop by hop, and GraphSearch-F, which flexibly retrieves across local and global neighborhoods without hop constraints. Extensive experiments across diverse benchmarks show that GraphSearch achieves competitive or even superior performance compared to supervised graph learning methods, setting state-of-the-art results in zero-shot node classification and link prediction. These findings position GraphSearch as a flexible and generalizable paradigm for agentic reasoning over graphs.
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