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AutoVerifier: An Agentic Automated Verification Framework Using Large Language Models

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NOW LET US Article – AutoVerifier: An Agentic Automated Verification Framework Using Large Language Models

AutoVerifier is an LLM-based agentic framework that automates the end-to-end verification of complex technical claims by decomposing assertions into structured knowledge graphs, enabling non-experts to conduct rigorous scientific intelligence assessments.

Computer Science > Artificial Intelligence

Title:AutoVerifier: An Agentic Automated Verification Framework Using Large Language Models

View PDF HTML (experimental)Abstract:Scientific and Technical Intelligence (S&TI) analysis requires verifying complex technical claims across rapidly growing literature, where existing approaches fail to bridge the verification gap between surface-level accuracy and deeper methodological validity. We present AutoVerifier, an LLM-based agentic framework that automates end-to-end verification of technical claims without requiring domain expertise. AutoVerifier decomposes every technical assertion into structured claim triples of the form (Subject, Predicate, Object), constructing knowledge graphs that enable structured reasoning across six progressively enriching layers: corpus construction and ingestion, entity and claim extraction, intra-document verification, cross-source verification, external signal corroboration, and final hypothesis matrix generation. We demonstrate AutoVerifier on a contested quantum computing claim, where the framework, operated by analysts with no quantum expertise, automatically identified overclaims and metric inconsistencies within the target paper, traced cross-source contradictions, uncovered undisclosed commercial conflicts of interest, and produced a final assessment. These results show that structured LLM verification can reliably evaluate the validity and maturity of emerging technologies, turning raw technical documents into traceable, evidence-backed intelligence assessments.

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Source: arXiv cs.AI Recent

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