An Enhanced Indexing And Ranking Technique On The Semantic Web

resource thumbnail

Remove from Bookmarks

Do you really want to remove?
This action cannot be undone. Choose 'Cancel' to stop and go back.
Ratings: 0
  • Which text to add here??

Added by benbanbun on 2011-12-01 09:38

» Viewed 719 times
» Favorited by 0 user(s)
» 0 Comments
» This resource has public visibility

Holder of Rights: Ahmed Tolba, Nabila Eladawi, Mohammed Elmogy

License: unknown

Creator(s): Ahmed Tolba, Nabila Eladawi, Mohammed Elmogy

Description:
With the fast growth of the Internet, more and more information is available on the Web. The Semantic Web has many features which cannot be handled by using the traditional search engines. It extracts metadata for each discovered Web documents in RDF or OWL formats, and computes relations between documents. We proposed a hybrid indexing and ranking technique for the Semantic Web which finds relevant documents and computes the similarity among a set of documents. First, it returns with the most related document from the repository of Semantic Web Documents (SWDs) by using a modified version of the ObjectRank technique. Then, it creates a sub-graph for the most related SWDs. Finally, It returns the hubs and authorities of these document by using the HITS algorithm. Our technique increases the quality of the results and decreases the execution time of processing the user's query.

Add to Collection

You don't have any collections yet. Click here to create your first collection!

Share to Group

You don't have any group you can share this resource with: the resource is already shared to all groups you are member in. Click here to see available groups!

Create QR Code

Please select the URI for the QR Code:




Tags

sort: alphabeticallyby frequency
use blanks to separate tags

Comments

An Enhanced Indexing And Ranking Technique On The Semantic Web With the fast growth of the Internet, more and more information is available on the Web. The Semantic Web has many features which cannot be handled by using the traditional search engines. It extracts metadata for each discovered Web documents in RDF or OWL formats, and computes relations between documents. We proposed a hybrid indexing and ranking technique for the Semantic Web which finds relevant documents and computes the similarity among a set of documents. First, it returns with the most related document from the repository of Semantic Web Documents (SWDs) by using a modified version of the ObjectRank technique. Then, it creates a sub-graph for the most related SWDs. Finally, It returns the hubs and authorities of these document by using the HITS algorithm. Our technique increases the quality of the results and decreases the execution time of processing the user's query. Ahmed Tolba, Nabila Eladawi, Mohammed Elmogy