Title :
Inferring User Interests from Relevance Feedback with High Similarity Sequence Data-Driven Clustering
Author :
Shtykh, Roman Y. ; Jin, Qun
Author_Institution :
Media Network Center, Waseda Univ.
Abstract :
Relevance feedback is an important source of information about a user and often used for usage and user modeling for further personalization of user-system interactions. In this paper we present a method to infer the userpsilas interests from his/her relevance feedback using an online incremental clustering method. For inference of a new interest (concept) and concept update the method uses the similarity characteristics of uniform user relevance feedback. It is fast, easy to implement and gives reasonable clustering results. We evaluate the method against two different data sets, demonstrate and discuss the outcomes.
Keywords :
data mining; inference mechanisms; pattern clustering; relevance feedback; user modelling; concept update; high similarity sequence data-driven clustering; online incremental clustering method; relevance feedback; similarity characteristics; usage modeling; user information; user interest inference; user modeling; user-system interaction personalization; Clustering methods; Collaboration; Data mining; Feedback; Humans; Information filtering; Information resources; Information retrieval; Information systems; Large-scale systems; incremental clustering; relevance feedback; user interests;
Conference_Titel :
Universal Communication, 2008. ISUC '08. Second International Symposium on
Conference_Location :
Osaka
Print_ISBN :
978-0-7695-3433-6
DOI :
10.1109/ISUC.2008.39