Multimedia recommendation: technology and techniques

Jialie Shen, Meng Wang, Shuicheng Yan, Peng Cui
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引用次数: 11

Abstract

In recent years, we have witnessed a rapid growth in the availability of digital multimedia on various application platforms and domains. Consequently, the problem of information overload has become more and more serious. In order to tackle the challenge, various multimedia recommendation technologies have been developed by different research communities (e.g., multimedia systems, information retrieval, machine learning and computer version). Meanwhile, many commercial web systems (e.g., Flick, YouTube, and Last.fm) have successfully applied recommendation techniques to provide users personalized content and services in a convenient and flexible way. When looking back, the information retrieval (IR) community has a long history of studying and contributing recommender system design and related issues. It has been proven that the recommender systems can effectively assist users in handling information overload and provide high-quality personalization. While several courses were dedicated to multimedia retrieval in the recent decade, to the best of our knowledge, the tutorial is the first one specifically focusing on multimedia recommender systems and their applications on various domains and media contents. We plan to summarize the research along this direction and provide an impetus for further research on this important topic
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多媒体推荐:技术与技巧
近年来,我们看到数字多媒体在各种应用平台和领域的可用性迅速增长。因此,信息超载的问题变得越来越严重。为了应对这一挑战,不同的研究团体开发了各种多媒体推荐技术(如多媒体系统、信息检索、机器学习和计算机版本)。与此同时,许多商业网站系统(如Flick、YouTube、Last.fm)已经成功地应用了推荐技术,以方便灵活的方式为用户提供个性化的内容和服务。回顾过去,信息检索界对推荐系统设计及相关问题的研究和贡献由来已久。实践证明,推荐系统可以有效地帮助用户处理信息过载,提供高质量的个性化服务。虽然近十年来有几门课程致力于多媒体检索,但据我们所知,本教程是第一个专门关注多媒体推荐系统及其在各种领域和媒体内容上的应用的教程。我们计划沿着这一方向总结研究,为这一重要课题的进一步研究提供动力
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