POLAR-Bench: A Diagnostic Benchmark for Privacy-Utility Trade-offs in LLM Agents

Researchers have introduced POLAR-Bench, a diagnostic benchmark evaluating how well LLM agents balance privacy and utility under adversarial attacks. The benchmark reveals a stark contrast, with smaller open-weight models (1-30B) leaking up to half of protected user attributes compared to frontier models.
Computer Science > Artificial Intelligence
Title:POLAR-Bench: A Diagnostic Benchmark for Privacy-Utility Trade-offs in LLM Agents
View PDF HTML (experimental)Abstract:LLM agents increasingly have access to private user data and act on the user's behalf when interacting with third-party systems. The user defines what may and must not be shared, and the agent must robustly follow that intent even when third-party systems behave adversarially. We introduce POLAR-Bench (Policy-aware adversarial Benchmark), in which a trusted model with a privacy policy and a task converses with a third-party model that adversarially probes for both task-relevant and protected attributes. Across 10 domains and 7,852 samples, we score privacy and utility by deterministic set-membership and vary privacy policy dimension and attack strategy along two orthogonal axes, producing a 5 times 5 diagnostic surface per model. Our results reveal a sharp split: current frontier models withhold over 99% of protected attributes, while smaller open-weight models in the 1--30B range, the class users most commonly run as their own trusted agent on-device or via private inference, score notably worse, with the weakest leaking over half. POLAR-Bench thus localizes where each model's intent-following breaks down, providing a foothold for privacy alignment where it matters most.
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Source: arXiv cs.AI Recent














