We give faster algorithms for producing sparse approximations of the transition matrices of $k$-step random walks on undirected, weighted graphs. These transition matrices also form graphs, and arise as intermediate objects in a variety of graph algorithms. Our improvements are based on a better understanding of processes that sample such walks, as well as tighter bounds on key weights underlying these sampling processes. On a graph with $n$ vertices and $m$ edges, our algorithm produces a graph with about $n\log{n}$ edges that approximates the $k$-step random walk graph in about $m + n \log^4{n}$ time. In order to obtain this runtime bound, we also revisit "density independent" algorithms for sparsifying graphs whose runtime overhead is ex...
Graph partitioning problems are a central topic of research in the study of approximation algorithms...
Graph Sparsification in the Semi-Streaming Model Analyzing massive data sets has been one of the key...
We use random sampling as a tool for solving undirected graph problems. We show that the sparse grap...
We give faster algorithms for producing sparse approximations of the transition matrices of $k$-step...
We give faster algorithms for producing sparse approximations of the transition matrices of k-step r...
We analyse the cover time of a random walk on a random graph of a given degree sequence. Weights are...
An algorithm observes the trajectories of random walks over an unknown graph $G$, starting from the ...
We present a general framework for constructing cut sparsifiers in undirected graphs --- weighted su...
In this paper, we set forth a new algorithm for generating approximately uniformly random spanning t...
In this paper, we provide faster algorithms for computing variousfundamental quantities associated w...
We present a general framework for constructing cut sparsifiers in undirected graphs- weighted subgr...
The problem of detecting dense subgraphs (communities) in large sparse graphs is inherent to many re...
The random walk is an important tool to analyze the structural features of graphs such as the commun...
The independence number of a sparse random graph G(n, m) of average degree d = 2m/n is well-known to...
We study the performance of algorithms for the Single-Source Shortest-Paths (SSSP) problem on graphs...
Graph partitioning problems are a central topic of research in the study of approximation algorithms...
Graph Sparsification in the Semi-Streaming Model Analyzing massive data sets has been one of the key...
We use random sampling as a tool for solving undirected graph problems. We show that the sparse grap...
We give faster algorithms for producing sparse approximations of the transition matrices of $k$-step...
We give faster algorithms for producing sparse approximations of the transition matrices of k-step r...
We analyse the cover time of a random walk on a random graph of a given degree sequence. Weights are...
An algorithm observes the trajectories of random walks over an unknown graph $G$, starting from the ...
We present a general framework for constructing cut sparsifiers in undirected graphs --- weighted su...
In this paper, we set forth a new algorithm for generating approximately uniformly random spanning t...
In this paper, we provide faster algorithms for computing variousfundamental quantities associated w...
We present a general framework for constructing cut sparsifiers in undirected graphs- weighted subgr...
The problem of detecting dense subgraphs (communities) in large sparse graphs is inherent to many re...
The random walk is an important tool to analyze the structural features of graphs such as the commun...
The independence number of a sparse random graph G(n, m) of average degree d = 2m/n is well-known to...
We study the performance of algorithms for the Single-Source Shortest-Paths (SSSP) problem on graphs...
Graph partitioning problems are a central topic of research in the study of approximation algorithms...
Graph Sparsification in the Semi-Streaming Model Analyzing massive data sets has been one of the key...
We use random sampling as a tool for solving undirected graph problems. We show that the sparse grap...