We propose a new scalable algorithm that can compute Per-sonalized PageRank (PPR) very quickly. The Power method is a state-of-the-art algorithm for computing exact PPR; however, it requires many iterations. Thus reducing the number of iterations is the main challenge. We achieve this by exploiting graph structures of web graphs and social networks. The convergence of our algo-rithm is very fast. In fact, it requires up to 7.5 times fewer iterations than the Power method and is up to five times faster in actual computation time. To the best of our knowledge, this is the first time to use graph structures explicitly to solve PPR quickly. Our contributions can be summarized as follows. 1. We provide an algorithm for computing a tree decom-pos...
Abstract. We study a problem of quick detection of top-k Personalized PageRank (PPR) lists. This pro...
PageRank-style (PR) link analyses are a cornerstone of Web search engines and Web mining, but they a...
Personalized PageRank (PPR) based measures of node proximity have been shown to be highly effective ...
We propose a new algorithm, FAST-PPR, for the Significant-PageRank problem: given input nodes s, t i...
Abstract. In this paper, we consider the problem of calculating fast and accurate ap-proximations to...
We propose FrogWild, a novel algorithm for fast approxi-mation of high PageRank vertices, geared tow...
We study a problem of quick detection of top-k Personalized PageRank (PPR) lists. This problem has a...
The web link graph has a nested block structure: the vast majority of hyperlinks link pages on a h...
Given a directed graph G, a source node s, and a target node t, the personalized PageRank (PPR) π(s,...
As one of the most well known graph computation problems, Personalized PageRank is an effective appr...
Given a graph G, a source node s and a target node t, the personalized PageRank (PPR) of t with resp...
PageRank is a classic measure that effectively evaluates the node importance in large graphs, and ha...
As Personalized PageRank has been widely leveraged for ranking on a graph, the efficient computation...
The research community has recently devoted an increasing amount of attention to reducing the comput...
PageRank is the measure of importance of a node within a set of nodes. It was originally developed f...
Abstract. We study a problem of quick detection of top-k Personalized PageRank (PPR) lists. This pro...
PageRank-style (PR) link analyses are a cornerstone of Web search engines and Web mining, but they a...
Personalized PageRank (PPR) based measures of node proximity have been shown to be highly effective ...
We propose a new algorithm, FAST-PPR, for the Significant-PageRank problem: given input nodes s, t i...
Abstract. In this paper, we consider the problem of calculating fast and accurate ap-proximations to...
We propose FrogWild, a novel algorithm for fast approxi-mation of high PageRank vertices, geared tow...
We study a problem of quick detection of top-k Personalized PageRank (PPR) lists. This problem has a...
The web link graph has a nested block structure: the vast majority of hyperlinks link pages on a h...
Given a directed graph G, a source node s, and a target node t, the personalized PageRank (PPR) π(s,...
As one of the most well known graph computation problems, Personalized PageRank is an effective appr...
Given a graph G, a source node s and a target node t, the personalized PageRank (PPR) of t with resp...
PageRank is a classic measure that effectively evaluates the node importance in large graphs, and ha...
As Personalized PageRank has been widely leveraged for ranking on a graph, the efficient computation...
The research community has recently devoted an increasing amount of attention to reducing the comput...
PageRank is the measure of importance of a node within a set of nodes. It was originally developed f...
Abstract. We study a problem of quick detection of top-k Personalized PageRank (PPR) lists. This pro...
PageRank-style (PR) link analyses are a cornerstone of Web search engines and Web mining, but they a...
Personalized PageRank (PPR) based measures of node proximity have been shown to be highly effective ...