The research presented in this paper is motivated by the growing interest in the analysis of networks found in the World Wide Web and of social networks. In this paper, we elaborate on the Kemeny constant as a measure of connectivity of the weighted graph associated with a Markov chain. For finite Markov chains, the Kemeny constant can be computed by means of simple algebra via the deviation matrix and the ergodic projector of the chain. Using this fact, we introduce a new decomposition algorithm for Markov chains that splits the graph the Markov chain is defined on into subgraphs, such that the connectivity of the chain measured by the Kemeny constant is maximally decreased. We discuss applications of our decomposition algorithm to influen...
In this thesis, we study convergence of finite state, discrete, and time homogeneous Markov chains t...
This paper presents different methods for computing the k-transition probability matrix pk for small...
Most networks and databases that humans have to deal with contain large, albeit finite number of uni...
The research presented in this paper is motivated by the growing interest in the analysis of network...
A quantity known as the Kemeny constant, which is used to measure the expected number of links that ...
A quantity known as the Kemeny constant, which is used to measure the expected number of links that...
Graphical Markov models use graphs, either undirected, directed, or mixed, to represent possible dep...
This work presents some general procedures for computing dissimilarities between nodes of a weighted...
The linear relation between Kemeny's constant, a graph metric directly linked with random walks, and...
This thesis explores three practically important problems related to social networks and proposes so...
The basis of Google’s acclaimed PageRank is an artificial mixing of the Markov chain representing th...
Markov chains provide us with a powerful tool for studying the structure of graphs and databases in ...
This thesis brings together three thematic topics, PageRank of evolving tree graphs, stopping criter...
We investigate exponential families of random graph distributions as a framework for systematic qua...
The connection between the mean first passage matrix of a finite homogeneous ergodic Markov chain an...
In this thesis, we study convergence of finite state, discrete, and time homogeneous Markov chains t...
This paper presents different methods for computing the k-transition probability matrix pk for small...
Most networks and databases that humans have to deal with contain large, albeit finite number of uni...
The research presented in this paper is motivated by the growing interest in the analysis of network...
A quantity known as the Kemeny constant, which is used to measure the expected number of links that ...
A quantity known as the Kemeny constant, which is used to measure the expected number of links that...
Graphical Markov models use graphs, either undirected, directed, or mixed, to represent possible dep...
This work presents some general procedures for computing dissimilarities between nodes of a weighted...
The linear relation between Kemeny's constant, a graph metric directly linked with random walks, and...
This thesis explores three practically important problems related to social networks and proposes so...
The basis of Google’s acclaimed PageRank is an artificial mixing of the Markov chain representing th...
Markov chains provide us with a powerful tool for studying the structure of graphs and databases in ...
This thesis brings together three thematic topics, PageRank of evolving tree graphs, stopping criter...
We investigate exponential families of random graph distributions as a framework for systematic qua...
The connection between the mean first passage matrix of a finite homogeneous ergodic Markov chain an...
In this thesis, we study convergence of finite state, discrete, and time homogeneous Markov chains t...
This paper presents different methods for computing the k-transition probability matrix pk for small...
Most networks and databases that humans have to deal with contain large, albeit finite number of uni...