Clustering is a popular unsupervised machine learning technique that groups similar input elements into clusters. It is used in many areas ranging from business analysis to health care. In many of these applications, sensitive information is clustered that should not be leaked. Moreover, nowadays it is often required to combine data from multiple sources to increase the quality of the analysis as well as to outsource complex computation to powerful cloud servers. This calls for efficient privacy-preserving clustering. In this work, we systematically analyze the state-of-the-art in privacy-preserving clustering. We implement and benchmark today’s four most efficient fully private clustering protocols by Cheon et al. (SAC’19), Meng et al. (Ar...
Many techniques for privacy-preserving data mining (PPDM) have been investigated over the past decad...
Recent concerns about privacy issues motivated data mining researchers to develop methods for perfor...
networking and database technologies have enabled the collection and storage of large quantities of ...
Clustering is one of the most useful techniques to do some data analysis. But the conventional way t...
The freedom and transparency of information flow on the Internet has heightened concerns of privacy....
Clustering is a very important tool in data mining and is widely used in on-line services for medica...
Clustering is a common technique for data analysis, which aims to partition data into similar groups...
Abstract. The exponential growth of databases containing personal in-formation has rendered the task...
User clustering is a common operation in online social networks, for example to recommend new friend...
Abstract. The ability to store vast quantities of data and the emergence of high speed networking ha...
In a ubiquitously connected world, social networks are playing an important role on the Internet by ...
Huge volume of detailed personal data is regularly collected and sharing of these data is proved to ...
This paper proposes an effficient solution with high accuracy to the problem of privacy-preserving c...
Recent concerns about privacy issues have motivated data mining researchers to develop methods for p...
Many techniques for privacy-preserving data mining (PPDM) have been investigated over the past decad...
Many techniques for privacy-preserving data mining (PPDM) have been investigated over the past decad...
Recent concerns about privacy issues motivated data mining researchers to develop methods for perfor...
networking and database technologies have enabled the collection and storage of large quantities of ...
Clustering is one of the most useful techniques to do some data analysis. But the conventional way t...
The freedom and transparency of information flow on the Internet has heightened concerns of privacy....
Clustering is a very important tool in data mining and is widely used in on-line services for medica...
Clustering is a common technique for data analysis, which aims to partition data into similar groups...
Abstract. The exponential growth of databases containing personal in-formation has rendered the task...
User clustering is a common operation in online social networks, for example to recommend new friend...
Abstract. The ability to store vast quantities of data and the emergence of high speed networking ha...
In a ubiquitously connected world, social networks are playing an important role on the Internet by ...
Huge volume of detailed personal data is regularly collected and sharing of these data is proved to ...
This paper proposes an effficient solution with high accuracy to the problem of privacy-preserving c...
Recent concerns about privacy issues have motivated data mining researchers to develop methods for p...
Many techniques for privacy-preserving data mining (PPDM) have been investigated over the past decad...
Many techniques for privacy-preserving data mining (PPDM) have been investigated over the past decad...
Recent concerns about privacy issues motivated data mining researchers to develop methods for perfor...
networking and database technologies have enabled the collection and storage of large quantities of ...