The k-Means Clustering problem is one of the most-explored problems in data mining to date. With the advent of protocols that have proven to be successful in performing single database clustering, the focus has changed in recent years to the question of how to extend the single database protocols to a multiple database setting. To date there have been numerous attempts to create specific multiparty kmeans clustering protocols that protect the privacy of each database, but according to the standard cryptographic definitions of “privacyprotection,” so far all such attempts have fallen short of providing adequate privacy. In this paper we describe a Two-Party k-Means Clustering Protocol that guarantees privacy, and is more efficient than utili...
networking and database technologies have enabled the collection and storage of large quantities of ...
Abstract. In this paper, we propose a privacy preserving distributed clustering protocol for horizon...
Data mining is a process to extract useful knowledge from large amounts of data. To conduct data min...
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...
Recent concerns about privacy issues have motivated data mining researchers to develop methods for p...
Preserving data privacy while conducting data clustering among multiple parties is a demanding probl...
Recent concerns about privacy issues motivated data mining researchers to develop methods for perfor...
Clustering is a very important tool in data mining and is widely used in on-line services for medica...
User clustering is a common operation in online social networks, for example to recommend new friend...
The freedom and transparency of information flow on the Internet has heightened concerns of privacy....
Part 1: Full PapersInternational audiencePrivacy preserving data mining has gained considerable atte...
With the advent of big data era, clients who lack computational and storage resources tend to outsou...
Abstract. The ability to store vast quantities of data and the emergence of high speed networking ha...
Data clustering is the unsupervised classification of data records into groups. As one of the steps ...
networking and database technologies have enabled the collection and storage of large quantities of ...
Abstract. In this paper, we propose a privacy preserving distributed clustering protocol for horizon...
Data mining is a process to extract useful knowledge from large amounts of data. To conduct data min...
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...
Recent concerns about privacy issues have motivated data mining researchers to develop methods for p...
Preserving data privacy while conducting data clustering among multiple parties is a demanding probl...
Recent concerns about privacy issues motivated data mining researchers to develop methods for perfor...
Clustering is a very important tool in data mining and is widely used in on-line services for medica...
User clustering is a common operation in online social networks, for example to recommend new friend...
The freedom and transparency of information flow on the Internet has heightened concerns of privacy....
Part 1: Full PapersInternational audiencePrivacy preserving data mining has gained considerable atte...
With the advent of big data era, clients who lack computational and storage resources tend to outsou...
Abstract. The ability to store vast quantities of data and the emergence of high speed networking ha...
Data clustering is the unsupervised classification of data records into groups. As one of the steps ...
networking and database technologies have enabled the collection and storage of large quantities of ...
Abstract. In this paper, we propose a privacy preserving distributed clustering protocol for horizon...
Data mining is a process to extract useful knowledge from large amounts of data. To conduct data min...