IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Automatically Extracting and Tagging Business Information for E-Business Systems Using Linguistic Analysis

Automatically Extracting and Tagging Business Information for E-Business Systems Using Linguistic Analysis
View Sample PDF
Author(s): Sumali J. Conlon (University of Mississippi, USA), Susan Lukose (University of Mississippi, USA), Jason G. Hale (University of Mississippi, USA)and Anil Vinjamur (University of Mississippi, USA)
Copyright: 2009
Pages: 19
Source title: Electronic Business: Concepts, Methodologies, Tools, and Applications
Source Author(s)/Editor(s): In Lee (Western Illinois University, USA)
DOI: 10.4018/978-1-60566-056-1.ch148

Purchase

View Automatically Extracting and Tagging Business Information for E-Business Systems Using Linguistic Analysis on the publisher's website for pricing and purchasing information.

Abstract

The Semantic Web will require semantic representations of information that computers can understand when they process business applications. Most Web content is currently represented in formats such as text, that facilitate human understanding, rather than in the more structured formats, that allow automated processing and computer understanding. This chapter explores how natural language processing (NLP) principles, using linguistic analysis, can be employed to extract information from unstructured Web documents and translate it into extensible markup language (XML)—the enabling currency of today’s e-business applications, and the foundation for the emerging Semantic Web languages of tomorrow. Our prototype system is built and tested with online financial documents.

Related Content

Emrah Arğın. © 2022. 16 pages.
Ebru Gülbuğ Erol, Mustafa Gülsün. © 2022. 17 pages.
Yeşim Şener. © 2022. 18 pages.
Salim Kurnaz, Deimantė Žilinskienė. © 2022. 20 pages.
Dorothea Maria Bowyer, Walid El Hamad, Ciorstan Smark, Greg Evan Jones, Claire Beattie, Ying Deng. © 2022. 29 pages.
Savas S. Ates, Vildan Durmaz. © 2022. 24 pages.
Nusret Erceylan, Gaye Atilla. © 2022. 20 pages.
Body Bottom