Mining large streams of user data for personalized recommendations

X. Amatriain
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引用次数: 135

Abstract

The Netflix Prize put the spotlight on the use of data mining and machine learning methods for predicting user preferences. Many lessons came out of the competition. But since then, Recommender Systems have evolved. This evolution has been driven by the greater availability of different kinds of user data in industry and the interest that the area has drawn among the research community. The goal of this paper is to give an up-to-date overview of the use of data mining approaches for personalization and recommendation. Using Netflix personalization as a motivating use case, I will describe the use of different kinds of data and machine learning techniques. After introducing the traditional approaches to recommendation, I highlight some of the main lessons learned from the Netflix Prize. I then describe the use of recommendation and personalization techniques at Netflix. Finally, I pinpoint the most promising current research avenues and unsolved problems that deserve attention in this domain.
挖掘大量用户数据流以提供个性化推荐
Netflix奖将焦点放在使用数据挖掘和机器学习方法来预测用户偏好上。比赛给我们带来了很多教训。但从那以后,推荐系统不断发展。这种演变是由工业中不同类型的用户数据的更大可用性和研究社区对该领域的兴趣所驱动的。本文的目标是对个性化和推荐的数据挖掘方法的最新使用进行概述。我将使用Netflix个性化作为激励用例,描述不同类型数据和机器学习技术的使用。在介绍了传统的推荐方法之后,我强调了从Netflix奖中学到的一些主要经验教训。然后,我描述了Netflix使用的推荐和个性化技术。最后,我指出了当前最有前途的研究途径和该领域值得关注的未解决问题。
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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