Deep learning-based Multi-Task Classification (MTC) is widely used in applications like facial attributes and healthcare that warrant strong privacy guarantees. In this work, we aim to protect sensitive information in the inference phase of MTC and propose a novel Multi-Trigger-Key (MTK) framework to achieve the privacy-preserving objective. MTK associates each secured task in the multi-task dataset with a specifically designed trigger-key. The true information can be revealed by adding the trigger-key if the user is authorized. We obtain such an MTK model by training it with a newly generated training set. To address the information leakage malaise resulting from correlations among different tasks, we generalize the training process by incorporating an MTK decoupling process with a controllable trade-off between the protective efficacy and the model performance. Theoretical guarantees and experimental results demonstrate the effectiveness of the privacy protection without appreciable hindering on the model performance.
翻译:多任务深度学习分类(MTC)被广泛用于面部属性和保健等需要强有力的隐私保障的应用中,在这项工作中,我们旨在保护MTC推论阶段的敏感信息,并提出新的多盘-Key(MTK)框架,以实现隐私保护目标。MTK将多任务数据集中每个有保障的任务与一个专门设计的触发键联系起来。如果用户得到授权,可以通过添加触发键来披露真实信息。我们通过对它进行新生成的培训来获得这样的MTK模型。为了解决由于不同任务之间的相互关系而造成的信息渗漏问题,我们通过将MTK脱钩过程与保护功效和模型性能之间的可控交易过程结合起来,将培训过程普遍化。理论保证和实验结果表明隐私保护的有效性,而不会明显妨碍模型性能。