CLLGSep 30, 2025

SafePassage: High-Fidelity Information Extraction with Black Box LLMs

arXiv:2510.00276v13 citationsh-index: 13
Originality Incremental advance
AI Analysis

This addresses trust issues in LLM-based information extraction for users relying on accurate data extraction, though it is incremental as it builds on existing methods.

The paper tackled the problem of hallucinations in information extraction with black box LLMs by introducing SafePassage, a pipeline that reduces hallucinations by up to 85% while maintaining high agreement with human judgments.

Black box large language models (LLMs) make information extraction (IE) easy to configure, but hard to trust. Unlike traditional information extraction pipelines, the information "extracted" is not guaranteed to be grounded in the document. To prevent this, this paper introduces the notion of a "safe passage": context generated by the LLM that is both grounded in the document and consistent with the extracted information. This is operationalized via a three-step pipeline, SafePassage, which consists of: (1) an LLM extractor that generates structured entities and their contexts from a document, (2) a string-based global aligner, and (3) a scoring model. Results show that using these three parts in conjunction reduces hallucinations by up to 85% on information extraction tasks with minimal risk of flagging non-hallucinations. High agreement between the SafePassage pipeline and human judgments of extraction quality mean that the pipeline can be dually used to evaluate LLMs. Surprisingly, results also show that using a transformer encoder fine-tuned on a small number of task-specific examples can outperform an LLM scoring model at flagging unsafe passages. These annotations can be collected in as little as 1-2 hours.

Foundations

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