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IFUP
Author(s) -
Feida Zhu,
Yongfeng Zhang,
Neil YorkeSmith,
Guibing Guo,
Xu Chen
Publication year - 2018
Publication title -
data archiving and networked services (dans)
Language(s) - English
Resource type - Conference proceedings
ISBN - 978-1-4503-5581-0
DOI - 10.1145/3159652.3160592
Subject(s) - computer science , recommender system , profiling (computer programming) , world wide web , component (thermodynamics) , key (lock) , task (project management) , multimedia , information retrieval , human–computer interaction , engineering , computer security , physics , systems engineering , thermodynamics , operating system
Recommendation system has became an important component in many real applications, ranging from e-commerce, music app to video-sharing site and on-line book store. The key of a successful recommendation system lies in the accurate user/item profiling. With the advent of web 2.0, quite a lot of multimodal information has been accumulated, which provides us with the opportunity to profile users in a more comprehensive manner. However, directly integrating multimodal information into recommendation system is not a trivial task, because they may be either homogenous or heterogeneous, which requires more advanced method for both fusion and alignment.This workshop aims to provide a platform for discussing the challenges and corresponding innovative approaches in fusing multi-dimensional information for user modeling and recommender systems. We hope more advanced technologies can be proposed or inspired, and also we hope that the direction of integrating different types of information can catch much more attention in both academic and industry.

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