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MULTIMEDIA '00 Proceedings of the eighth ACM international conference on Multimedia
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LA-WEBMEDIA '04 Proceedings of the WebMedia & LA-Web 2004 Joint Conference 10th Brazilian Symposium on Multimedia and the Web 2nd Latin American Web Congress
Introduction to Multimedia Communications: Applications, Middleware, Networking
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Evaluation of a Middleware System for Accessing Digital Music Libraries in Mobile Services
ITNG '08 Proceedings of the Fifth International Conference on Information Technology: New Generations
A Novel Method Providing Multimedia Contents According to Preference Clones in Mobile Environment
ICCS '07 Proceedings of the 7th international conference on Computational Science, Part III: ICCS 2007
ALIMOS: a middleware system for accessing digital music LIbraries in MObile services
KES'06 Proceedings of the 10th international conference on Knowledge-Based Intelligent Information and Engineering Systems - Volume Part I
Robust music information retrieval on mobile network based on multi-feature clustering
ADMA'06 Proceedings of the Second international conference on Advanced Data Mining and Applications
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ALIMOS is a middleware system that facilitates the access to digital music libraries in push technology-based mobile services. Specifically, a mobile user is provided with the ability to query for music files that belong to the same genre by simply sending an example music file from his/her mobile device. The personalization in ALIMOS is based on information collected while the service is used by a user and provides the user with results that have a higher content similarity with the query. The personalization mechanism is based on a novel application of clustering algorithms.