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

A Novel Approach to Managing the Dynamic Nature of Semantic Relatedness

A Novel Approach to Managing the Dynamic Nature of Semantic Relatedness
View Sample PDF
Author(s): Youngseok Choi (Brunel Business School, Brunel University London, London, UK), Jungsuk Oh (Business School, Seoul National University, Seoul, South Korea)and Jinsoo Park (Business School, Seoul National University, Seoul, South Korea)
Copyright: 2016
Volume: 27
Issue: 2
Pages: 26
Source title: Journal of Database Management (JDM)
Editor(s)-in-Chief: Keng Siau (Singapore Management University, Singapore)
DOI: 10.4018/JDM.2016040101

Purchase

View A Novel Approach to Managing the Dynamic Nature of Semantic Relatedness on the publisher's website for pricing and purchasing information.

Abstract

This research proposes a novel method of measuring the dynamics of semantic relatedness. Research on semantic relatedness has a long history in the fields of computational linguistics, psychology, computer science, as well as information systems. Computing semantic relatedness has played a critical role in various situations, such as data integration and keyword recommendation. Many researchers have tried to propose more sophisticated techniques to measure semantic relatedness. However, little research has considered the change of semantic relatedness with the flow of time and occurrence of events. The authors' proposed method is validated by actual corpus data collected from a particular context over a specific period of time. They test the feasibility of our proposed method by constructing semantic networks by using the corpus collected during a different period of time. The experiment results show that our method can detect and manage the changes in semantic relatedness between concepts. Based on the results, the authors discuss the need for a dynamic semantic relatedness paradigm.

Related Content

Pasi Raatikainen, Samuli Pekkola, Maria Mäkelä. © 2024. 30 pages.
Zhongliang Li, Yaofeng Tu, Zongmin Ma. © 2024. 25 pages.
Zongmin Ma, Daiyi Li, Jiawen Lu, Ruizhe Ma, Li Yan. © 2024. 32 pages.
Lavlin Agrawal, Pavankumar Mulgund, Raj Sharman. © 2024. 37 pages.
Jizi Li, Xiaodie Wang, Justin Z. Zhang, Longyu Li. © 2024. 34 pages.
Amit Singh, Jay Prakash, Gaurav Kumar, Praphula Kumar Jain, Loknath Sai Ambati. © 2024. 25 pages.
Ruizhe Ma, Weiwei Zhou, Zongmin Ma. © 2024. 21 pages.
Body Bottom