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Recommenders for commerce, content, and community

机译:商业,内容和社区的推荐人

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摘要

Recommender systems are ubiquitous on the Internet for helping sell products - everything from automobiles to zebras (stuffed, anyway). Novel applications are emerging that use recommenders for non-Internet applications and that apply them to the problems of distributing content on the Internet and to developing online communities. Community-building is proving one of the most successful ways to create "stickiness" among customers. A vibrant community of practice around a company's products creates a powerful barrier to competition and enables consumers to help sell and support your products. We briefly survey eight principles of recommender systems, illuminated by examples from research and commerce. We use the principles to investigate the algorithms that underlie recommender systems, the interfaces for presenting the recommendations, the best practices for deploying them - and the easiest ways to get a recommender system badly wrong. Along the way, we consider issues of how to build a recommender community from scratch, group recommendations, and consumer privacy. We conclude with a look at some of the most important active research areas in recommender systems.
机译:推荐系统在Internet上无处不在,可以帮助销售产品-从汽车到斑马(无论如何都是填充物)。新兴的应用程序正在使用将推荐器用于非Internet应用程序,并将其应用于在Internet上分发内容和发展在线社区的问题。社区建设被证明是在客户之间创造“粘性”的最成功方法之一。公司产品周围活跃的实践社区为竞争创造了强大的障碍,并使消费者能够帮助销售和支持您的产品。我们简要介绍了推荐系统的八项原则,并以研究和商业示例为例进行了说明。我们使用这些原理来研究推荐系统的基础算法,呈现建议的界面,部署建议的最佳实践以及使推荐系统严重错误的最​​简单方法。在此过程中,我们考虑了如何从头开始建立推荐者社区,小组推荐和消费者隐私的问题。最后,我们介绍了推荐系统中一些最重要的活跃研究领域。

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