Peer-to-peer(P2P) computing is emerging as a new distributed computing paradigm for novel applications that involves exchange of information among peers with little centralized coordination. Analyzing data distributed in P2P networks requires peer-to-peer data mining algorithms that can mine the data without data centralization. However, replicating result of centralized data mining in an exact fashion is often communication-wise expensive. Approximate algorithms can be a realistic and communication-efficient alternative in this case.This dissertation concentrates on developing approximate data mining algorithms suitable for P2P networks, that closely estimates the result of centralized data mining algorithm with probabilistic guarantee usi...
Dealing with big amounts of data is one of the challenges for clustering, which causes the need for ...
Global communication requirements and load imbalance of some parallel data mining algorithms are the...
A wide range of mining and analysis problems involve extracting knowledge from count data. Such data...
Peer-to-peer(P2P) computing is emerging as a new distributed computing paradigm for novel applicatio...
Distributed data mining deals with the problem of data analysis in environments with distributed dat...
Data intensive peer-to-peer (P2P) networks are becoming increasingly popular in applications like so...
Peer-to-peer (P2P) systems such as Gnutella, Napster, e-Mule, Kazaa, and Freenet are increasingly be...
The emerging widespread use of Peer-to-Peer computing is making the P2P Data Mining a natural choic...
Abstract—This paper describes a local and distributed ex-pectation maximization algorithm for learni...
Large scale decentralized systems, such as P2P, sensor or loT device networks are becoming increasin...
The exponential increase of availability of digital data and the necessity to process it in business...
of autonomous data sources dispersed over a wide area. Data mining is an essential technology for ob...
In recent years, peer-to-peer (P2P) systems have emerged as a powerful networking paradigm that allo...
Data mining in distributed systems has been facilitated by using high-support association rules. Les...
Abstract. Fully distributed data mining algorithms build global models over large amounts of data di...
Dealing with big amounts of data is one of the challenges for clustering, which causes the need for ...
Global communication requirements and load imbalance of some parallel data mining algorithms are the...
A wide range of mining and analysis problems involve extracting knowledge from count data. Such data...
Peer-to-peer(P2P) computing is emerging as a new distributed computing paradigm for novel applicatio...
Distributed data mining deals with the problem of data analysis in environments with distributed dat...
Data intensive peer-to-peer (P2P) networks are becoming increasingly popular in applications like so...
Peer-to-peer (P2P) systems such as Gnutella, Napster, e-Mule, Kazaa, and Freenet are increasingly be...
The emerging widespread use of Peer-to-Peer computing is making the P2P Data Mining a natural choic...
Abstract—This paper describes a local and distributed ex-pectation maximization algorithm for learni...
Large scale decentralized systems, such as P2P, sensor or loT device networks are becoming increasin...
The exponential increase of availability of digital data and the necessity to process it in business...
of autonomous data sources dispersed over a wide area. Data mining is an essential technology for ob...
In recent years, peer-to-peer (P2P) systems have emerged as a powerful networking paradigm that allo...
Data mining in distributed systems has been facilitated by using high-support association rules. Les...
Abstract. Fully distributed data mining algorithms build global models over large amounts of data di...
Dealing with big amounts of data is one of the challenges for clustering, which causes the need for ...
Global communication requirements and load imbalance of some parallel data mining algorithms are the...
A wide range of mining and analysis problems involve extracting knowledge from count data. Such data...