Nowadays, people are paying increasing attention to the security of personal privacy data in artificial intelligence systems. Federated learning is a solution to address the issue of unified data collection for training in artificial intelligence systems. Among these, the Cross-Sample computation process is a stage where personal privacy data is often leaked in federated learning, and a viable mechanism to ensure data confidentiality during the Cross-Sample computation process in federated learning is provided by attribute-based searchable encryption (ABSE). However, the search process in most existing ABSE systems is inherently sequential, which fundamentally precludes their use in scenarios demanding high throughput and concurrent execution. Meanwhile, it is worth noting that most ABSE schemes fail to achieve both rich attribute expression and hidden policy. In response to these limitations, the present work introduces Hidden Policy Conditional Attribute-Based Keyword Search (HP-CABKS), which supports server-side concurrent evaluation in the search phase. Under the Generic Group Model, our scheme satisfies adaptive security against chosen keyword attacks and keyword secrecy. Experimental results demonstrate that our scheme exhibits low time consumption in the search phase. Our scheme exhibits robust security, high efficiency, and strong practicality, making it well-suited for real-world applications such as Cross-Sample computation in federated learning.
扫码关注我们
求助内容:
应助结果提醒方式:
