Title
Ensemble approach for cross language information retrieval
Abstract
Cross language information retrieval (CLIR) is a sub field of information retrieval (IR) which deals with retrieval of content from one language (source language) for a search query expressed in another language (target language) in the Web. Cross Language Information Retrieval evolved as a field due to the fact that majority of the content in the web is in English. Hence there is a need for dynamic translation of web content for a query expressed in the native language. The biggest problem is that of ambiguity of the query expressed in the native language. The ambiguity of languages is typically not a problem for human beings who can infer the appropriate word sense or meaning based on context, but search engines cannot usually overcome these limitations. Hence, methods and mechanisms to provide native languages access to information from the web are needed. There is a need, to not only retrieve the relevant results but also, present the content behind the results in a user understandable manner. The research in the domain has so far focused in terms of techniques that make use support vector machines, suffix tree approach, Boolean models, and iterative results clustering. This research work focuses on a methodology of personalized context based cross language information retrieval using ensemble-learning approach. The source language for this research is taken, as English and the target language is Telugu. The methodology has tested for various queries and the results are shown in this work.
Year
DOI
Venue
2012
10.1007/978-3-642-28601-8_23
CICLing (2)
Keywords
Field
DocType
native languages access,native language,web content,various query,source language,information retrieval,target language,search query,ensemble approach,cross language information retrieval,research work,summarization,ontology
RDF query language,Query language,Question answering,Information retrieval,Query expansion,Computer science,Data control language,Universal Networking Language,Language identification,Natural language processing,Artificial intelligence,Cross-language information retrieval
Conference
Citations 
PageRank 
References 
1
0.37
9
Authors
3
Name
Order
Citations
PageRank
Dinesh Mavaluru110.37
R. Shriram2375.83
W. Aisha Banu320.74