Adaptive PII Mitigation Framework for Large Language Models
Artificial Intelligence (AI) faces growing challenges from evolving data protection laws and enforcement practices worldwide. Regulations like GDPR and CCPA impose strict compliance requirements on Machine Learning (ML) models, especially concerning personal data use. These laws grant individuals ri...
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Zusammenfassung: | Artificial Intelligence (AI) faces growing challenges from evolving data
protection laws and enforcement practices worldwide. Regulations like GDPR and
CCPA impose strict compliance requirements on Machine Learning (ML) models,
especially concerning personal data use. These laws grant individuals rights
such as data correction and deletion, complicating the training and deployment
of Large Language Models (LLMs) that rely on extensive datasets. Public data
availability does not guarantee its lawful use for ML, amplifying these
challenges.
This paper introduces an adaptive system for mitigating risk of Personally
Identifiable Information (PII) and Sensitive Personal Information (SPI) in
LLMs. It dynamically aligns with diverse regulatory frameworks and integrates
seamlessly into Governance, Risk, and Compliance (GRC) systems. The system uses
advanced NLP techniques, context-aware analysis, and policy-driven masking to
ensure regulatory compliance.
Benchmarks highlight the system's effectiveness, with an F1 score of 0.95 for
Passport Numbers, outperforming tools like Microsoft Presidio (0.33) and Amazon
Comprehend (0.54). In human evaluations, the system achieved an average user
trust score of 4.6/5, with participants acknowledging its accuracy and
transparency. Observations demonstrate stricter anonymization under GDPR
compared to CCPA, which permits pseudonymization and user opt-outs. These
results validate the system as a scalable and robust solution for enterprise
privacy compliance. |
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DOI: | 10.48550/arxiv.2501.12465 |