Litcius/Paper detail

Towards Differentially Private Text Representations

Lingjuan Lyu, Yitong Li, Xuanli He, Tong Xiao

202036 citationsDOI

Abstract

Most deep learning frameworks require users to pool their local data or model updates to a trusted server to train or maintain a global model. The assumption of a trusted server who has access to user information is ill-suited in many applications. To tackle this problem, we develop a new deep learning framework under an untrusted server setting, which includes three modules: (1) embedding module, (2) randomization module, and (3) classifier module. For the randomization module, we propose a novel local differentially private (LDP) protocol to reduce the impact of privacy parameter ε on accuracy, and provide enhanced flexibility in choosing randomization probabilities for LDP. Analysis and experiments show that our framework delivers comparable or even better performance than the non-private framework and existing LDP protocols, demonstrating the advantages of our LDP protocol.

Topics & Concepts

Computer scienceEmbeddingProtocol (science)Flexibility (engineering)Classifier (UML)Private information retrievalServerRandomizationArtificial intelligenceComputer networkDistributed computingTheoretical computer scienceMachine learningComputer securityPathologySurgeryAlternative medicineMedicineStatisticsRandomized controlled trialMathematicsPrivacy-Preserving Technologies in DataCryptography and Data SecurityStochastic Gradient Optimization Techniques