This article focuses on computations on large graphs (e.g., the web-graph) where the edges of the graph are presented as a stream. The objective in the streaming model is to use small amount of memory (preferably sub-linear in the number of nodes n) and a smaller number of passes. In the streaming model, we show how to perform several graph computations including estimating the probability distribution after a random walk of length l, the mixing time M, and other related quantities such as the conductance of the graph. By applying our algorithm for computing probability distribution on the web-graph, we can estimate the PageRank p of any node up to an additive error of √ ɛp + ɛ in Õ(√M/α) passes and Õ(min(nα + 1/ɛ√M/α + (1/ɛ)Mα, αn √ Mα + (...
We present a streaming algorithm that makes one pass over the edges of an unweighted graph pre-sente...
Massive graphs arise in a many scenarios, for example, traffic data analysis in large networks, larg...
We analyze the distribution of PageRank on a directed configuration model and show that as the size ...
PageRank is a classic measure that effectively evaluates the node importance in large graphs, and ha...
Graph Sparsification in the Semi-Streaming Model Analyzing massive data sets has been one of the key...
We propose FrogWild, a novel algorithm for fast approxi-mation of high PageRank vertices, geared tow...
This paper describes a novel Monte Carlo based random walk to compute PageRanks of nodes in a large ...
Balanced graph partitioning in the streaming setting is a key problem to enable scalable and efficie...
Extracting knowledge by performing computations on graphs is becoming increasingly challenging as gr...
Data stream processing has recently received increasing attention as a computational paradigm for de...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
This thesis is about variants of PageRank, methods of PageRank computation and perturbation analysis...
This article reports the results of an extensive experimental analysis of efficient algorithms for c...
We present random sampling algorithms that with probability at least 1 − δ compute a (1 ± ɛ)approxim...
We present a streaming algorithm that makes one pass over the edges of an unweighted graph pre-sente...
Massive graphs arise in a many scenarios, for example, traffic data analysis in large networks, larg...
We analyze the distribution of PageRank on a directed configuration model and show that as the size ...
PageRank is a classic measure that effectively evaluates the node importance in large graphs, and ha...
Graph Sparsification in the Semi-Streaming Model Analyzing massive data sets has been one of the key...
We propose FrogWild, a novel algorithm for fast approxi-mation of high PageRank vertices, geared tow...
This paper describes a novel Monte Carlo based random walk to compute PageRanks of nodes in a large ...
Balanced graph partitioning in the streaming setting is a key problem to enable scalable and efficie...
Extracting knowledge by performing computations on graphs is becoming increasingly challenging as gr...
Data stream processing has recently received increasing attention as a computational paradigm for de...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
This thesis is about variants of PageRank, methods of PageRank computation and perturbation analysis...
This article reports the results of an extensive experimental analysis of efficient algorithms for c...
We present random sampling algorithms that with probability at least 1 − δ compute a (1 ± ɛ)approxim...
We present a streaming algorithm that makes one pass over the edges of an unweighted graph pre-sente...
Massive graphs arise in a many scenarios, for example, traffic data analysis in large networks, larg...
We analyze the distribution of PageRank on a directed configuration model and show that as the size ...