Title:
|
NEW INFORMATION RETRIEVAL APPROACH BASED ON SEMANTIC INDEXING BY MEANING |
Author(s):
|
Ala Eddine Kharrat and Lobna Hlaoua |
ISBN:
|
978-989-8533-95-1 |
Editors:
|
Hans Weghorn |
Year:
|
2019 |
Edition:
|
Single |
Keywords:
|
Information Retrieval, Indexation, Semantic Index, Exact Word Meaning |
Type:
|
Full Paper |
First Page:
|
155 |
Last Page:
|
162 |
Language:
|
English |
Cover:
|
|
Full Contents:
|
click to dowload
|
Paper Abstract:
|
An Information Retrieval System (IRS) offers a number of tools and techniques, which enable to locate and visualize the
relevant information needed. This information, is expressed by the user in the form of a query natural language. However,
the representation of documents and the query in a traditional IRS lead to a lexical-centered relevance estimation which is,
in fact, less efficient than a semantic-focused estimation. As a consequence, the documents that are actually relevant are
not being recovered if they do not share words with the query, while the documents non relevant, which are words in
common with the query, are recovered even though at times they do not have the meaning intended. This paper tackles this
problem while suggesting a solution in the level of indexation of an IRS allowing it to improve its performance. To be more
precise, we suggest a new approach of semantic indexation allowing to lead to the exact meaning of each term in a document
or query undergoing a contextual analysis at the sentence level. In fact, if the system is able to comprehend the need of the
user, then consequently it is perfectly capable to respond to it. Add to that, we suggest a simple method allowing to apply
any model of IR on our new index table without changing its original bases making it faster. In order to validate this
proposed approach, this new created system is evaluated base on numerous collections naming TIME, BBC, The
Guardian and BigThink. The results based on the experiments indicate the efficacy of our hypothesis compared to
traditional IR approaches. |
|
|
|
|