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

Concept Identification Using Co-Occurrence Graph

Concept Identification Using Co-Occurrence Graph
View Sample PDF
Author(s): Anoop Kumar Pandey (Centre for Development of Advanced Computing, Bangalore, India)
Copyright: 2018
Volume: 10
Issue: 1
Pages: 12
Source title: International Journal of Web Portals (IJWP)
DOI: 10.4018/IJWP.2018010103

Purchase

View Concept Identification Using Co-Occurrence Graph on the publisher's website for pricing and purchasing information.

Abstract

In a community setting, Utilitarian Knowledge or “Knowledge that works” are routinely diffused through social media interactions. The aggregation of this knowledge is a divergent process, where common knowledge gets segregated into several local worlds of utilitarian knowledge. To capture and represent this knowledge, several data models have been proposed. One of the model organizes concepts (atomic elements) in a hierarchy namely concept hierarchy (“is-a”) in which concepts are added manually at the most appropriate level inside the hierarchy. To minimize manual intervention in entity resolution, this article proposes entity resolution based on co-occurrence graph and continuous learning, thereby eliminating the bottleneck of manual concept entry. While traditional Supervised Learning methods require sufficient training data beforehand which is not available in a community setting at start, Continuous Learning method could be useful which can acquire new behaviours and can evolve as the community data evolves.

Related Content

Lata Jaywant Sankpal, Suhas H. Patil. © 2022. 23 pages.
Amna Alsalem, Emad Ahmed Abu-Shanab. © 2022. 20 pages.
Bimal aklesh Kumar. © 2022. 12 pages.
Nikola Vlahovic, Andrija Brljak, Mirjana Pejic-Bach. © 2021. 19 pages.
Ahmed Aloui, Okba Kazar. © 2021. 20 pages.
Ilhem Feddaoui, Faîçal Felhi, Fahad Algarni, Jalel Akaichi. © 2021. 22 pages.
Fernando Almeida, José Augusto Monteiro. © 2021. 12 pages.
Body Bottom