Publication: Detecting Similar Areas of Knowledge Using Semantic and Data Mining Technologies
Loading...
Date
2016-12-09
Journal Title
Journal ISSN
Volume Title
Publisher
ELSEVIER B.V.
Abstract
Searching for scientific publications online is an essential task for researchers working on a certain topic. However, the extremely large amount of scientific publications found in the web turns the process of finding a publication into a very difficult task whereas, locating peers interested in collaborating on a specific topic or reviewing literature is even more challenging. In this paper, we propose a novel architecture to join multiple bibliographic sources, with the aim of identifying common research areas and potential collaboration networks, through a combination of ontologies, vocabularies, and Linked Data technologies for enriching a base data model. Furthermore, we implement a prototype to provide a centralized repository with bibliographic sources and to find similar knowledge areas using data mining techniques in the domain of Ecuadorian researchers community.
Description
Keywords
Data Integration, Data Mining, Linked Data, Query Languages, Semantic Web
