Bhaveshgawri PageRank Save

Implementation of PageRank algorithm along with TopicSpecific and TrustRank.

Project README

PageRank Algorithm

An implementation of Google's earlier PageRank algorithm.

Includes:

  • Implementation of PageRank Algorithm.
  • Implementation of TrustRank Algorithm to identify spam pages.
  • Implementation of Topic-Specific Rank Algorithm.
  • Visual Representation through a graph at each step as the algorithm proceeds.

Requirements - numpy, scipy and networkx :

Using apt:

$ sudo apt install python3-numpy
$ sudo apt install python3-scipy
$ sudo apt install python3-networkx

Using pip3:

$ sudo pip3 install numpy
$ sudo pip3 install scipy
$ sudo pip3 install networkx

How to run?

Open main.py, set the path of corpus and update the number of nodes in your coupus. Save main.py and run it.

$ python3 main.py

Sample data is provided in /PageRank/data. You may use your own graph too.

Specification of files:

main.py

Contains the runner function which calls the ranking functions.

graphs.py

Contains 2 classes: getGraph and plotGraph. getGraph: Takes input from graph file. Graph file contains edges of the graph. plotGraph: The Visualizing class. Plots the web-graph of the screen and shows how it changes as the algorithm proceeds.

PageRank.py

Contains class that implements Google's earlier PageRanking Algorithm. Here, teleport set contains all the nodes in the web-graph. A random-surfer can jump to any of the node(page) in the web-graph with equal probaility.

TrustRank.py

Contains class that implements TrustRank. Trust is propagated from a set of trusted pages to all other pages. Effective in detection of Spam Pages. Here, teleport set is the set of trusted pages.

TopicSpecificRank.py

Contains class implementing Topic-Specific Rank. Here, teleport set is a set of pages which are related to each other and belong to same topic.

What else do I need to know?

  • Node numbering starts from 0. Node 0 is a valid node in web-graph.
  • If you need to change any parameters, change them in main.py.
  • Teleports, Dead-ends and Spider-traps are taken care off.
  • Rank leaked during the iterations is re-distributed among appropriate nodes equally.
  • 2 implementations of Topic-Spectific Rank:
    • Adjacency list (normal-iteration using numpy arrays)
    • Sparce Matrix (power-iteration using scipy.csr_matrix)

What are you talking about? What is PageRank?

eFactory: The PageRank Algorithm.
Princeton: Page Rank explained.
Wikipedia: PageRank.

Open Source Agenda is not affiliated with "Bhaveshgawri PageRank" Project. README Source: bhaveshgawri/PageRank
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