IFUP: Workshop on Multi-dimensional Information Fusion for User Modeling and Personalization

Feida Zhu, Yongfeng Zhang, N. Yorke-Smith, G. Guo, Xu Chen
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引用次数: 5

Abstract

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.
IFUP:多维信息融合用户建模和个性化研讨会
推荐系统已经成为许多实际应用的重要组成部分,从电子商务、音乐应用到视频分享网站和在线书店。一个成功的推荐系统的关键在于准确的用户/项目分析。随着web 2.0的出现,已经积累了相当多的多模式信息,这为我们提供了更全面地分析用户的机会。然而,将多模态信息直接集成到推荐系统中并不是一件容易的事情,因为它们可能是同质的,也可能是异质的,这需要更先进的融合和对齐方法。本次研讨会旨在提供一个平台,讨论在用户建模和推荐系统中融合多维信息的挑战和相应的创新方法。我们希望能够提出或启发更先进的技术,也希望整合不同类型信息的方向能够得到学术界和工业界的更多关注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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