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PII-Bench: Evaluating Query-Aware Privacy Protection Systems

About

The widespread adoption of Large Language Models (LLMs) has raised significant privacy concerns regarding the exposure of personally identifiable information (PII) in user prompts. To address this challenge, we propose a query-unrelated PII masking strategy and introduce PII-Bench, the first comprehensive evaluation framework for assessing privacy protection systems. PII-Bench comprises 2,842 test samples across 55 fine-grained PII categories, featuring diverse scenarios from single-subject descriptions to complex multi-party interactions. Each sample is carefully crafted with a user query, context description, and standard answer indicating query-relevant PII. Our empirical evaluation reveals that while current models perform adequately in basic PII detection, they show significant limitations in determining PII query relevance. Even state-of-the-art LLMs struggle with this task, particularly in handling complex multi-subject scenarios, indicating substantial room for improvement in achieving intelligent PII masking.

Hao Shen, Zhouhong Gu, Haokai Hong, Weili Han• 2025

Related benchmarks

TaskDatasetResultRank
Query-Related PII DetectionPII-single 1.0 (test)--
30
Query-Related PII DetectionPII-Real (test)--
30
Query-Related PII DetectionPII-multi--
30
Query-Unrelated PII MaskingPII-single and PII-multi--
30
Query-Unrelated PII MaskingPII-Real--
30
PII detectionPII-Single v1 (test)--
8
PII detectionPII-Multi v1 (test)--
8
PII detectionPII-Hard v1 (test)--
8
PII detectionPII-Distract v1 (test)--
8
PII detectionPII-Real--
7
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