Controlled experiments across 96 LoRA adapters show that reduced optimizer updates explain nearly all observed memorization drops in DP-SGD fine-tuning, HMAC pseudonymization cuts exposure 40-61% without creating new targets, and 1-3B models achieve only 0.19-0.28 F1 under the tested budget.
Position: Considerations for differentially private learning with large-scale public pretraining
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The paper analyzes evolving security and safety threats in generative AI from content generation to agentic actions, noting that attack surfaces expand faster than defenses and that many safeguards require institutional coordination not yet in place.
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From AI-Generated Content to Agentic Action: Security and Safety Threats in Generative AI
The paper analyzes evolving security and safety threats in generative AI from content generation to agentic actions, noting that attack surfaces expand faster than defenses and that many safeguards require institutional coordination not yet in place.