|
Using Dynamically Acquired Background Knowledge For Information Extraction And Intelligent Search
|
|
Abstract: This paper presents a simple framework for extracting information found in publications or documents that are issued in large volumes and which cover similar concepts or issues within a given domain. The general aim of the work described, is to present a model for automatically augmenting segments of these documents with metadata using dynamically acquired background domain knowledge in order to assist users in easily locating information within these documents through a structured front end. To realize this goal, both document structure as well as dynamically acquired background knowledge, are utilized. A real life example where these ideas have been applied is also presented.
|
URL |
|
Publication year |
2004
|
Organization Name |
|
Country |
United States
|
City |
Hershey
|
Publisher |
Name:
Idea Group Publishing
|
serial title |
Intelligent Agents for Data Mining and Information Retrieval
|
Department |
Knowledge Engineering and Expert System Building Tools
|
Project |
|
Author(s) from ARC |
|
Book editors |
Masoud Mohammadian
|
Agris Categories |
Documentation and information
|
Publication Type |
Book / Book Chapter
|