Y Yiwen Wang
Eindhoven University of Technology
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Publication
Featured researches published by Y Yiwen Wang.
international semantic web conference | 2007
Lora Aroyo; N Natalia Stash; Y Yiwen Wang; P Gorgels; Lw Rutledge
The main objective of the CHIP project is to demonstrate how Semantic Web technologies can be deployed to provide personalized access to digital museum collections. We illustrate our approach with the digital database ARIA of the Rijksmuseum Amsterdam. For the semantic enrichment of the Rijksmuseum ARIA database we collaborated with the CATCH STITCH project to produce mappings to Iconclass, and with the MultimediaN E-culture project to produce the RDF/OWL of the ARIA and Adlib databases. The main focus of CHIP is on exploring the potential of applying adaptation techniques to provide personalized experience for the museum visitors both on the Web site and in the museum.
international conference on user modeling, adaptation, and personalization | 2007
Y Yiwen Wang; Lora Aroyo; N Natalia Stash; Lw Rutledge
In this paper we present an approach for personalized access to museum collections. We use a RDF/OWL specification of the Rijksmuseum Amsterdam collections as a driver for an interactive dialog. The user gives his/her judgment on the artefacts, indicating likes or dislikes. The elicited user model is further used for generating recommendations of artefacts and topics. In this way we support exploration and discovery of information in museum collections. A user study provided insights in characteristics of our target user group, and showed how novice and expert users employ their background knowledge and implicit interest in order to elicit their art preference in the museum collections.
adaptive hypermedia and adaptive web based systems | 2008
Lw Rutledge; N Natalia Stash; Y Yiwen Wang; Lora Aroyo
This paper discusses accuracy in processing ratings of and recommendations for item features. Such processing facilitates feature-based user navigation in recommender system interfaces. Item features, often in the form of tags, categories or meta-data, are becoming important hypertext components of recommender interfaces. Recommending features would help unfamiliar users navigate in such environments. This work explores techniques for improving feature recommendation accuracy. Conversely, it also examines possibilities for processing user ratings of features to improve recommendation of both features and items. This works illustrative implementation is a web portal for a museum collection that lets users browse, rate and receive recommendations for both artworks and interrelated topics about them. Accuracy measurements compare proposed techniques for processing feature ratings and recommending features. Resulting techniques recommend features with relative accuracy. Analysis indicates that processing ratings of either features or items does not improve accuracy of recommending the other.
Natural Resource Modeling | 2007
Lora Aroyo; Y Yiwen Wang; Rogier Brussee; P Gorgels; Lw Rutledge; N Natalia Stash
human factors in computing systems | 2009
I Ivo Roes; N Natalia Stash; Y Yiwen Wang; Lora Aroyo
international conference on knowledge capture | 2009
Y Yiwen Wang; N Natalia Stash; Lora Aroyo; Laura Hollink; Guus Schreiber
Physica D: Nonlinear Phenomena | 2008
Y Yiwen Wang; Rody van Sambeek; Yuri Schuurmans; Lora Aroyo; N Natalia Stash; Lw Rutledge; P Gorgels
Journal of Applied Physics | 2008
N Natalia Stash; Lora Aroyo; Y Yiwen Wang; Lw Rutledge; P Gorgels
international conference on user modeling adaptation and personalization | 2010
W.R. van Hage; N Natalia Stash; Y Yiwen Wang; Lora Aroyo
Lecture Notes in Computer Science | 2010
W.R. van Hage; N Natalia Stash; Y Yiwen Wang; L.M. Aroyo; L. Aroyo; G. Antoniou; E. Hyvönen; Teije, ten, A.; Heiner Stuckenschmidt; L. Cabral; T. Tudorache