FORT synthesizes shortcut-resistant search tasks by controlling four identified shortcut risks across entity selection, graph construction, question formulation, and refinement, producing training data that yields agents with longer search trajectories and top performance among open-source models on
HopWeaver: Cross-Document Synthesis of High-Quality and Authentic Multi-Hop Questions
2 Pith papers cite this work. Polarity classification is still indexing.
abstract
Multi-Hop Question Answering (MHQA) is crucial for evaluating the model's capability to integrate information from diverse sources. However, creating extensive and high-quality MHQA datasets is challenging: (i) manual annotation is expensive, and (ii) current synthesis methods often produce simplistic questions or require extensive manual guidance. This paper introduces HopWeaver, the first cross-document framework synthesizing authentic multi-hop questions without human intervention. HopWeaver synthesizes bridge and comparison questions through an innovative pipeline that identifies complementary documents and constructs authentic reasoning paths to ensure true multi-hop reasoning. We further present a comprehensive system for evaluating the synthesized multi-hop questions. Empirical evaluations demonstrate that the synthesized questions achieve comparable or superior quality to human-annotated datasets at a lower cost. Our framework provides a valuable tool for the research community: it can automatically generate challenging benchmarks from any raw corpus, which opens new avenues for both evaluation and targeted training to improve the reasoning capabilities of advanced question answering models, especially in domains with scarce resources.
fields
cs.CL 2years
2026 2verdicts
UNVERDICTED 2representative citing papers
EVE is the first open-source end-to-end system with a domain-adapted 24B LLM that outperforms peers on new Earth Intelligence benchmarks while adding RAG and hallucination detection in a production deployment.
citing papers explorer
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FORT-Searcher: Synthesizing Shortcut-Resistant Search Tasks for Training Deep Search Agents
FORT synthesizes shortcut-resistant search tasks by controlling four identified shortcut risks across entity selection, graph construction, question formulation, and refinement, producing training data that yields agents with longer search trajectories and top performance among open-source models on
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EVE: A Domain-Specific LLM Framework for Earth Intelligence
EVE is the first open-source end-to-end system with a domain-adapted 24B LLM that outperforms peers on new Earth Intelligence benchmarks while adding RAG and hallucination detection in a production deployment.