Title :
Personalized information recommendation in digital library domain based on ontology
Author :
Yu, Zhengtao ; Zheng, Zhiyun ; Shengxiang Gao ; Guo, Jianyi
Abstract :
Personalized recommendation is implemented by computing the similarity of user´s interests and resources. Most of current recommendation systems compute the similarity based on keywords, which is simply implemented but much semantic information are lost. This paper takes the personalized recommendations of digital library as example, proposes a method to implement personalized recommendation service. User profile and resource features are represented by vector space model. And then these keyword vectors are extended in conceptual level by virtue of domain ontology and HowNet knowledge database. So conceptual space vectors of user and resource are generated. Therefore, personalized recommendation service is provided to user according to the similarity of the conceptual space vectors. Experiment data shows that the similarity based on concept is more efficient than similarity based on keyword in personalized recommendation service.
Keywords :
deductive databases; digital libraries; information services; ontologies (artificial intelligence); personal information systems; HowNet knowledge database; digital library domain; keywords; ontology; personalized information recommendation; personalized recommendation service; resource features; semantic information; user profile; vector space model; Automation; Chemical technology; Computer architecture; Computer industry; Computer science; Data mining; Knowledge representation; Natural languages; Ontologies; Software libraries;
Conference_Titel :
Communications and Information Technology, 2005. ISCIT 2005. IEEE International Symposium on
Print_ISBN :
0-7803-9538-7
DOI :
10.1109/ISCIT.2005.1567094