Privacy-preserving machine learning algorithms are crucial for the increasingly common setting in which personal data, such as medical or financial records, are analyzed. We provide general techniques to produce privacy-preserving approximations of classifiers learned via (regularized) empirical risk minimization (ERM). These algorithms are private under the ε-differential privacy definition due to Dwork et al. (2006). First we apply the output perturbation ideas of Dwork et al. (2006), to ERM classification. Then we propose a new method, objective perturbation, for privacy-preserving machine learning algorithm design. This method entails perturbing the objective function before optimizing over classifiers. If the loss and regularizer satis...
Nowadays, owners and developers of deep learning models must consider stringent privacy-preservation...
In this dissertation, I am going to introduce my work on differentially privatedata mining. There ar...
Abstract—As increasing amounts of sensitive personal information is aggregated into data repositorie...
The past decade has witnessed the fast growth and tremendous success of machine learning. However, r...
Differential privacy is concerned about the prediction quality while measuring the privacy impact on...
Abstract. The ubiquitous need for analyzing privacy-sensitive information— including health records,...
Modern machine learning increasingly involves personal data, such as healthcare, financial and user ...
In this paper, we initiate a systematic investigation of differentially private algorithms for conve...
Machine learning applications in fields where data is sensitive, such as healthcare and banking, fac...
Data holders are increasingly seeking to protect their user’s privacy, whilst still maximizing their...
Abstract. Several recent studies in privacy-preserving learning have considered the trade-off be-twe...
Differential privacy is a cryptographically motivated definition of privacy which has gained conside...
Traditional approaches to differential privacy assume a fixed privacy requirement epsilon for a comp...
Differential privacy is a mathematical framework for privacy-preserving data analysis. Changing the ...
The availability of large amounts of informative data is crucial for successful machine learning. Ho...
Nowadays, owners and developers of deep learning models must consider stringent privacy-preservation...
In this dissertation, I am going to introduce my work on differentially privatedata mining. There ar...
Abstract—As increasing amounts of sensitive personal information is aggregated into data repositorie...
The past decade has witnessed the fast growth and tremendous success of machine learning. However, r...
Differential privacy is concerned about the prediction quality while measuring the privacy impact on...
Abstract. The ubiquitous need for analyzing privacy-sensitive information— including health records,...
Modern machine learning increasingly involves personal data, such as healthcare, financial and user ...
In this paper, we initiate a systematic investigation of differentially private algorithms for conve...
Machine learning applications in fields where data is sensitive, such as healthcare and banking, fac...
Data holders are increasingly seeking to protect their user’s privacy, whilst still maximizing their...
Abstract. Several recent studies in privacy-preserving learning have considered the trade-off be-twe...
Differential privacy is a cryptographically motivated definition of privacy which has gained conside...
Traditional approaches to differential privacy assume a fixed privacy requirement epsilon for a comp...
Differential privacy is a mathematical framework for privacy-preserving data analysis. Changing the ...
The availability of large amounts of informative data is crucial for successful machine learning. Ho...
Nowadays, owners and developers of deep learning models must consider stringent privacy-preservation...
In this dissertation, I am going to introduce my work on differentially privatedata mining. There ar...
Abstract—As increasing amounts of sensitive personal information is aggregated into data repositorie...