Background: Users of a personalised recommendation system face a dilemma: recommendations can be improved by learning from data, but only if other users are willing to share their private information. Good personalised predictions are vitally important in precision medicine, but genomic information on which the predictions are based is also particularly sensitive, as it directly identifies the patients and hence cannot easily be anonymised. Differential privacy has emerged as a potentially promising solution: privacy is considered sufficient if presence of individual patients cannot be distinguished. However, differentially private learning with current methods does not improve predictions with feasible data sizes and dimensionalities. Resu...
Privacy-preserving machine learning algorithms are crucial for the increasingly common setting in wh...
Privacy preservation plays a vital role in health care applications as the requirements for privacy ...
Brinkrolf J, Berger K, Hammer B. Differential private relevance learning. In: Verleysen M, ed. Proce...
Background: Users of a personalised recommendation system face a dilemma: recommendations can be imp...
Motivation: Human genomic datasets often contain sensitive information that limits use and sharing o...
In this dissertation, I am going to introduce my work on differentially privatedata mining. There ar...
We initiate the study of privacy in pharmacogenetics, wherein machine learning models are used to gu...
The predictive potential of the many large datasets being held in healthcare, financial markets, soc...
The increased generation of data has become one of the main drivers of technological innovation in h...
Privacy concern in data sharing especially for health data gains particularly increasing attention n...
Machine learning applications in fields where data is sensitive, such as healthcare and banking, fac...
Background: Recent developments in machine learning have shown its potential impact for clinical use...
Abstract. Privacy concerns are among the major barriers to efficient secondary use of information an...
Data holders are increasingly seeking to protect their user’s privacy, whilst still maximizing their...
Privacy restrictions of sensitive data repositories imply that the data analysis is performed in iso...
Privacy-preserving machine learning algorithms are crucial for the increasingly common setting in wh...
Privacy preservation plays a vital role in health care applications as the requirements for privacy ...
Brinkrolf J, Berger K, Hammer B. Differential private relevance learning. In: Verleysen M, ed. Proce...
Background: Users of a personalised recommendation system face a dilemma: recommendations can be imp...
Motivation: Human genomic datasets often contain sensitive information that limits use and sharing o...
In this dissertation, I am going to introduce my work on differentially privatedata mining. There ar...
We initiate the study of privacy in pharmacogenetics, wherein machine learning models are used to gu...
The predictive potential of the many large datasets being held in healthcare, financial markets, soc...
The increased generation of data has become one of the main drivers of technological innovation in h...
Privacy concern in data sharing especially for health data gains particularly increasing attention n...
Machine learning applications in fields where data is sensitive, such as healthcare and banking, fac...
Background: Recent developments in machine learning have shown its potential impact for clinical use...
Abstract. Privacy concerns are among the major barriers to efficient secondary use of information an...
Data holders are increasingly seeking to protect their user’s privacy, whilst still maximizing their...
Privacy restrictions of sensitive data repositories imply that the data analysis is performed in iso...
Privacy-preserving machine learning algorithms are crucial for the increasingly common setting in wh...
Privacy preservation plays a vital role in health care applications as the requirements for privacy ...
Brinkrolf J, Berger K, Hammer B. Differential private relevance learning. In: Verleysen M, ed. Proce...