User clustering is a common operation in online social networks, for example to recommend new friends. In previous work [5], Erkin et al. proposed a privacy-preserving K-means clustering algorithm for the semi-honest model, using homomorphic encryption and multi-party computation. This paper makes three contributions: 1) it addresses remaining privacy weaknesses in Erkin’s protocol, 2) it minimizes user interaction and allows clustering of offline users (through a central party acting on users’ behalf), and 3) it enables highly efficient non-linear operations, improving overall efficiency (by its three-party structure). Our complexity and security analyses underscore the advantages of the solution
Preserving data privacy while conducting data clustering among multiple parties is a demanding probl...
Abstract. The ability to store vast quantities of data and the emergence of high speed networking ha...
Clustering is a popular unsupervised machine learning technique that groups similar input elements i...
User clustering is a common operation in online social networks, for example to recommend new friend...
In a ubiquitously connected world, social networks are playing an important role on the Internet by ...
The freedom and transparency of information flow on the Internet has heightened concerns of privacy....
Recent concerns about privacy issues have motivated data mining researchers to develop methods for p...
In recent years, there have been numerous attempts to extend the k-means clustering protocol for sin...
In recent years, there have been numerous attempts to extend the k-means clustering protocol for sin...
The k-Means Clustering problem is one of the most-explored problems in data mining to date. With the...
Clustering is a common technique for data analysis, which aims to partition data into similar groups...
Recent concerns about privacy issues motivated data mining researchers to develop methods for perfor...
Clustering is one of the most useful techniques to do some data analysis. But the conventional way t...
Clustering is a very important tool in data mining and is widely used in on-line services for medica...
Part 1: Full PapersInternational audiencePrivacy preserving data mining has gained considerable atte...
Preserving data privacy while conducting data clustering among multiple parties is a demanding probl...
Abstract. The ability to store vast quantities of data and the emergence of high speed networking ha...
Clustering is a popular unsupervised machine learning technique that groups similar input elements i...
User clustering is a common operation in online social networks, for example to recommend new friend...
In a ubiquitously connected world, social networks are playing an important role on the Internet by ...
The freedom and transparency of information flow on the Internet has heightened concerns of privacy....
Recent concerns about privacy issues have motivated data mining researchers to develop methods for p...
In recent years, there have been numerous attempts to extend the k-means clustering protocol for sin...
In recent years, there have been numerous attempts to extend the k-means clustering protocol for sin...
The k-Means Clustering problem is one of the most-explored problems in data mining to date. With the...
Clustering is a common technique for data analysis, which aims to partition data into similar groups...
Recent concerns about privacy issues motivated data mining researchers to develop methods for perfor...
Clustering is one of the most useful techniques to do some data analysis. But the conventional way t...
Clustering is a very important tool in data mining and is widely used in on-line services for medica...
Part 1: Full PapersInternational audiencePrivacy preserving data mining has gained considerable atte...
Preserving data privacy while conducting data clustering among multiple parties is a demanding probl...
Abstract. The ability to store vast quantities of data and the emergence of high speed networking ha...
Clustering is a popular unsupervised machine learning technique that groups similar input elements i...