Title :
Network-Enabled Knowledge Discovery Service Design -- Medical Online Texts
Author :
Wei-Feng Tung ; Wen-Kai Liu
Author_Institution :
Dept. of Inf. Manage., Fu-Jen Catholic Univ., New Taipei, Taiwan
Abstract :
This research proposes a network-enabled knowledge discovery service design using content-based term co-occurrence network (TCN) and user-based collaborative filtering (CF) strategy to reinforce service innovation of digital content management system (CMS). Within these integrating knowledge discovery methodologies, a content-based term cooccurrence network (TCN) analysis can advance the scopes of content search management. The collaborative filtering (CF) can be used to recommend the other contents based on the similar users ratings. Using the network-enabled approach of TCN and CF, a large number of digital contents can be appropriately disseminated and recommended. In order to verify the effects of the combination´s methodologies, some experiments use an online databank of online medical texts (articles) (jtami.medinform.org.tw) to demonstrate the combination of TCN and CF. To evaluate the effects of the knowledge discovery can use some testing questions through a open medical dataset (i.e., OHSUMED). Moreover, these experiments can use the evaluations of recall and precision to test and verify the effectiveness for digital content search.
Keywords :
collaborative filtering; content management; data mining; medical computing; text analysis; CF strategy; CMS; OHSUMED; TCN; content search management; content-based term cooccurrence network analysis; digital content management system; knowledge discovery methodologies; medical online texts; network-enabled knowledge discovery service design; online databank; open medical dataset; service innovation; user-based collaborative filtering strategy; Biochemistry; Collaboration; Content management; Correlation coefficient; Equations; Filtering; Knowledge discovery; CF; CMS; Collaboration Filtering; Knowledge Discovery; TCN; Term Co-occurrence Network;
Conference_Titel :
Genetic and Evolutionary Computing (ICGEC), 2012 Sixth International Conference on
Conference_Location :
Kitakushu
Print_ISBN :
978-1-4673-2138-9
DOI :
10.1109/ICGEC.2012.113