An Agentic Workflow for Detecting Personally Identifiable Information in Crash Narratives
Junyi Ma, Pei Li, Rui Gan, Kai Cheng, Steven T. Parker, Bin Ran

TL;DR
This paper presents a privacy-preserving, agentic workflow leveraging large language models and rule-based methods for effective detection of personally identifiable information in crash narratives, enhancing traffic safety analysis.
Contribution
It introduces a hybrid, locally deployable PII detection workflow combining rule-based and LLM techniques with ensemble and verification steps, improving accuracy and privacy.
Findings
Achieved 0.82 precision and 0.94 recall in PII detection.
Outperformed baseline methods in real-world crash dataset.
Ensemble extraction and verification improved detection of addresses and identifiers.
Abstract
Crash narratives in crash reports provide crucial contextual information for traffic safety analysis. Yet, their broader use is hindered by the presence of personally identifiable information (PII), including names, home addresses, and license plate numbers. Because PII appears sparsely and inconsistently in crash narratives, manual detection is not scalable, and existing rule-based approaches often fail to capture context-dependent PII. This study develops and evaluates a locally deployable, agentic workflow for PII detection in crash narratives by leveraging large language models (LLMs). The workflow contains a Hybrid Extractor and a Verifier. The Hybrid Extractor routes structured PII (e.g., phone numbers and email addresses) to a rule-based model (i.e., Presidio) and context-dependent PII (e.g., names, home addresses, and alphanumeric identifiers) to a domain-adapted, fine-tuned…
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