Abstract: This work presents some general procedures for computing dissimilarities between nodes of a weighted, undirected, graph. It is based on a Markov-chain model of random walk through the graph. This method is applied on the architecture of a Multi Agent System (MAS), in which each agent can be considered as a node and each interaction between two agents as a link. The model assigns transition probabilities to the links between agents, so that a random walker can jump from agent to agent. A quantity, called the average first-passage time, computes the average number of steps needed by a random walker for reaching agent � for the first time, when starting from agent �. A closely related quantity, called the average commute time, provid...
This work presents a systematic comparison between seven kernels (or similarity matrices) on a graph...
With the continuing development of the electronic commerce and growth of network information, there ...
Predicting links in complex networks has been one of the essential topics within the realm of data m...
This work presents some general procedures for computing dissimilarities between nodes of a weighted...
This work presents some general procedures for computing dissimilarities between nodes of a weighted...
This work presents some general procedures for computing dissimilarities between elements of a datab...
This work presents a new perspective on characterizing the similarity between elements of a database...
This work presents a new perspective on characterizing the similarity between elements of a database...
The presented paper deals with the comparison between two social networks with the same set V of act...
A recommendation system has been built for a web resource’s users that applies statistics about user...
This work introduces a new family of link-based dissimilarity mea-sures between nodes of a weighted,...
Recommender systems play a central role in providing individualized access to information and servic...
AbstractThis paper is primarily expository, relating elements of graph theory to a computational the...
We propose a multi-agent algorithm able to automatically discover relevant regularities in a given d...
A recommender system uses information about known as-sociations between users and items to compute f...
This work presents a systematic comparison between seven kernels (or similarity matrices) on a graph...
With the continuing development of the electronic commerce and growth of network information, there ...
Predicting links in complex networks has been one of the essential topics within the realm of data m...
This work presents some general procedures for computing dissimilarities between nodes of a weighted...
This work presents some general procedures for computing dissimilarities between nodes of a weighted...
This work presents some general procedures for computing dissimilarities between elements of a datab...
This work presents a new perspective on characterizing the similarity between elements of a database...
This work presents a new perspective on characterizing the similarity between elements of a database...
The presented paper deals with the comparison between two social networks with the same set V of act...
A recommendation system has been built for a web resource’s users that applies statistics about user...
This work introduces a new family of link-based dissimilarity mea-sures between nodes of a weighted,...
Recommender systems play a central role in providing individualized access to information and servic...
AbstractThis paper is primarily expository, relating elements of graph theory to a computational the...
We propose a multi-agent algorithm able to automatically discover relevant regularities in a given d...
A recommender system uses information about known as-sociations between users and items to compute f...
This work presents a systematic comparison between seven kernels (or similarity matrices) on a graph...
With the continuing development of the electronic commerce and growth of network information, there ...
Predicting links in complex networks has been one of the essential topics within the realm of data m...