PageRank becomes the most well-known re-ranking technique of the search results. By its iterative computational nature, the computation takes much computing time and resource. Researchers have then devoted much attention in studying an efficient way to compute the PageRank scores of a very large web graph. However, only a few of them focus on large-scale PageRank computation using parallel processing techniques. In this paper, we propose a Partition-based parallel PageRank algorithm that can efficiently run on a low-cost parallel environment like the PC cluster. For comparison, we also study the other two known techniques, as well as propose an analytical discussion concerning I/O and synchronization cost, and memory usage. Experimental res...
We developed analogous parallel algorithms to implement CostRank for distributed memory parallel com...
We developed analogous parallel algorithms to implement CostRank for distributed memory parallel com...
Graphs are a ubiquitous concept used for modeling entities and their relationships. Large graphs, pr...
PageRank is the measure of importance of a node within a set of nodes. It was originally developed f...
PageRank algorithm is a benchmark for many graph analytics and is the underlying kernel for link pre...
PageRank kernel is a standard benchmark addressing various graph processing and analytical problems....
Abstract—The internet is a huge collection of websites in the order of 108 bytes. Around 90 % of the...
The PageRank algorithm is an important component in effective web search. At the core of this algori...
Abstract This paper discusses efficient techniques for computing PageRank, a ranking met-ric for hyp...
Cataloged from PDF version of article.The PageRank algorithm is an important component in effective ...
This paper presents different parallel implementations of Google’s PageRank algorithm. The purpose i...
A global and centralized classification of web pages requires a fairly high computation cost and the...
The PageRank method is an important and basic component in effective web search to compute the rank ...
A power method formulation, which efficiently handles the problem of dangling pages, is investigated...
In this work we present parallel algorithms based on the use of two-stage methods for solving the Pa...
We developed analogous parallel algorithms to implement CostRank for distributed memory parallel com...
We developed analogous parallel algorithms to implement CostRank for distributed memory parallel com...
Graphs are a ubiquitous concept used for modeling entities and their relationships. Large graphs, pr...
PageRank is the measure of importance of a node within a set of nodes. It was originally developed f...
PageRank algorithm is a benchmark for many graph analytics and is the underlying kernel for link pre...
PageRank kernel is a standard benchmark addressing various graph processing and analytical problems....
Abstract—The internet is a huge collection of websites in the order of 108 bytes. Around 90 % of the...
The PageRank algorithm is an important component in effective web search. At the core of this algori...
Abstract This paper discusses efficient techniques for computing PageRank, a ranking met-ric for hyp...
Cataloged from PDF version of article.The PageRank algorithm is an important component in effective ...
This paper presents different parallel implementations of Google’s PageRank algorithm. The purpose i...
A global and centralized classification of web pages requires a fairly high computation cost and the...
The PageRank method is an important and basic component in effective web search to compute the rank ...
A power method formulation, which efficiently handles the problem of dangling pages, is investigated...
In this work we present parallel algorithms based on the use of two-stage methods for solving the Pa...
We developed analogous parallel algorithms to implement CostRank for distributed memory parallel com...
We developed analogous parallel algorithms to implement CostRank for distributed memory parallel com...
Graphs are a ubiquitous concept used for modeling entities and their relationships. Large graphs, pr...