Abstract. The goal of distributed learning in P2P networks is to achieve results as close as possible to those from centralized approaches. Learning models of classification in a P2P network faces several challenges like scalability, peer dynamism, asynchronism and data privacy preservation. In this paper, we study the feasibility of building SVM classifiers in a P2P network. We show how cascading SVM can be mapped to a P2P network of data propagation. Our proposed P2P SVM provides a method for constructing classifiers in P2P networks with classification accuracy comparable to centralized classifiers and better than other distributed classifiers. The proposed algorithm also satisfies the characteristics of P2P computing and has an upper bou...
Nowadays new peer to peer (P2P) traffic with dynamic port and encrypted technology makes the identif...
This paper describes an efficient method to construct reliable machine learning applications in peer...
Abstract—This paper describes a local and distributed ex-pectation maximization algorithm for learni...
Abstract. Distributed classification aims to learn with accuracy com-parable to that of centralized ...
Although the support vector machine (SVM) algorithm has a high generalization property for classifyi...
Abstract. Fully distributed data mining algorithms build global models over large amounts of data di...
In conventional method, distributed support vector machines (SVM) algorithms are trained over pre-co...
Abstract. Distributed classification aims to build an accurate classifier by learning from distribut...
Network traffic classification plays a vital role in various network activities. Network traffic dat...
In this paper, we discuss machine intelligence for conducting routine tasks within the Internet. We ...
Learning from distributed data sets is common problem nowadays and the question of its actuality can...
We propose an algorithm for the problem of training a SVM model when the set of training examples is...
Abstract. Classification is a kind of basic semantics that people often use to manage versatile cont...
Botnets have become one of the majorthreats on the Internet. They are used to generatespam, carry ou...
In this work, we aim to classify nodes of unstructured peer-to-peer networks with communication unce...
Nowadays new peer to peer (P2P) traffic with dynamic port and encrypted technology makes the identif...
This paper describes an efficient method to construct reliable machine learning applications in peer...
Abstract—This paper describes a local and distributed ex-pectation maximization algorithm for learni...
Abstract. Distributed classification aims to learn with accuracy com-parable to that of centralized ...
Although the support vector machine (SVM) algorithm has a high generalization property for classifyi...
Abstract. Fully distributed data mining algorithms build global models over large amounts of data di...
In conventional method, distributed support vector machines (SVM) algorithms are trained over pre-co...
Abstract. Distributed classification aims to build an accurate classifier by learning from distribut...
Network traffic classification plays a vital role in various network activities. Network traffic dat...
In this paper, we discuss machine intelligence for conducting routine tasks within the Internet. We ...
Learning from distributed data sets is common problem nowadays and the question of its actuality can...
We propose an algorithm for the problem of training a SVM model when the set of training examples is...
Abstract. Classification is a kind of basic semantics that people often use to manage versatile cont...
Botnets have become one of the majorthreats on the Internet. They are used to generatespam, carry ou...
In this work, we aim to classify nodes of unstructured peer-to-peer networks with communication unce...
Nowadays new peer to peer (P2P) traffic with dynamic port and encrypted technology makes the identif...
This paper describes an efficient method to construct reliable machine learning applications in peer...
Abstract—This paper describes a local and distributed ex-pectation maximization algorithm for learni...