Title
Model for Re-ranking Agent on Hybrid Search Engine for E-learning
Abstract
The Web provides an enormous amount of learning tutorials. Searching standard content is not easy for common user of traditional search engine. The user only focuses on the top results from the enormous quantity of the arrived results. So the Re-ranking problem turns into the significant responsibility for the search systems. This paper proposes a novel model of Re-ranking Agent on Hybrid search engine (Meta-search engine and Topical search engine) for helping learners searching online Learning tutorials efficiently and in the effective way. With the aim of providing users with relevant tutorials we have proposed model classified by subject topic, prepared by professional persons and preferred by learners.
Year
DOI
Venue
2012
10.1109/T4E.2012.55
T4E
Keywords
Field
DocType
traditional search engine,meta-search engine,hybrid search engine,common user,re-ranking problem,enormous quantity,enormous amount,search system,re-ranking agent,topical search engine,electronic learning,engines,search engines,internet,web pages,metasearch,search engine,meta search engine
World Wide Web,Metasearch engine,E learning,Search engine,Hybrid search engine,Information retrieval,Web page,Ranking,Computer science,Search analytics,Multimedia,The Internet
Conference
Citations 
PageRank 
References 
0
0.34
4
Authors
4
Name
Order
Citations
PageRank
Axita Shah100.34
Sonal Jain21489.29
Rushabh Chheda300.34
Avni Mashru400.34