Xiaochen Li (University of Virginia), Zhan Qin (Zhejiang University), Kui Ren (Zhejiang University), Chen Gong (University of Virginia), Shuya Feng (University of Connecticut), Yuan Hong (University of Connecticut), Tianhao Wang (University of Virginia)

The research on tasks involving differentially private data stream releases has traditionally centered around real-time scenarios. However, not all data streams inherently demand real-time releases, and achieving such releases is challenging due to network latency and processing constraints in practical settings. We delve into the advantages of introducing a delay time in stream releases. Concentrating on the event-level privacy setting, we discover that incorporating a delay can overcome limitations faced by current approaches, thereby unlocking substantial potential for improving accuracy.

Building on these insights, we developed a framework for data stream releases that allows for delays. Capitalizing on data similarity and relative order characteristics, we devised two optimization strategies, group-based and order-based optimizations, to aid in reducing the added noise and post-processing of noisy data. Additionally, we introduce a novel sensitivity truncation mechanism, significantly further reducing the amount of introduced noise. Our comprehensive experimental results demonstrate that, on a data stream of length $18,319$, allowing a delay of $10$ timestamps enables the proposed approaches to achieve a remarkable up to a $30times$ improvement in accuracy compared to baseline methods.
Our code is open-sourced.

View More Papers

Automatic Library Fuzzing through API Relation Evolvement

Jiayi Lin (The University of Hong Kong), Qingyu Zhang (The University of Hong Kong), Junzhe Li (The University of Hong Kong), Chenxin Sun (The University of Hong Kong), Hao Zhou (The Hong Kong Polytechnic University), Changhua Luo (The University of Hong Kong), Chenxiong Qian (The University of Hong Kong)

Read More

Passive Inference Attacks on Split Learning via Adversarial Regularization

Xiaochen Zhu (National University of Singapore & Massachusetts Institute of Technology), Xinjian Luo (National University of Singapore & Mohamed bin Zayed University of Artificial Intelligence), Yuncheng Wu (Renmin University of China), Yangfan Jiang (National University of Singapore), Xiaokui Xiao (National University of Singapore), Beng Chin Ooi (National University of Singapore)

Read More

Towards Anonymous Chatbots with (Un)Trustworthy Browser Proxies

Dzung Pham, Jade Sheffey, Chau Minh Pham, and Amir Houmansadr (University of Massachusetts Amherst)

Read More