An empathy-based approach using artificial personas in a sandbox environment bridges the privacy gap by allowing users to experience and understand the impact of their privacy data on system outcomes.
Ensuring privacy in aggregate queries through innovative IT-PIR frameworks.
全ての既存のガウス機構は、完全ランク共分散行列の呪いに苦しんでおり、新しいRank-1特異多変量ガウス(R1SMG)メカニズムはこの呪いを解消します。
Introducing the Budget Recycling Differential Privacy (BR-DP) framework enhances utility and privacy protection by optimizing budget allocation and incorporating subsampling.
The article presents new lower bounds for differential privacy under continual observation and online threshold queries, challenging existing upper bounds.
Clipping mechanism optimizes error bounds in shuffle-DP for sum estimation problems.
R1SMG mechanism achieves (ε,δ)-DP with lower noise magnitude.
Advancing differential privacy practices for real-world applications.
The author explores the impact of real-world data priors on data reconstruction attacks, highlighting a discrepancy between theoretical models and practical outcomes. The study emphasizes the significance of incorporating data priors accurately into privacy guarantees for better alignment with real-world scenarios.
The author introduces CypherTalk, a cost-effective and self-adaptive shaking and recovery mechanism for Large Language Models (LLMs) to balance privacy concerns with operational efficacy.