Deep Neural Networks for YouTube Recommendations

Paul Covington, Jay K. Adams, Emre Sargin
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引用次数: 2469

Abstract

YouTube represents one of the largest scale and most sophisticated industrial recommendation systems in existence. In this paper, we describe the system at a high level and focus on the dramatic performance improvements brought by deep learning. The paper is split according to the classic two-stage information retrieval dichotomy: first, we detail a deep candidate generation model and then describe a separate deep ranking model. We also provide practical lessons and insights derived from designing, iterating and maintaining a massive recommendation system with enormous user-facing impact.
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YouTube推荐的深度神经网络
YouTube代表了现存规模最大、最复杂的工业推荐系统之一。在本文中,我们在高层次上描述了系统,并重点介绍了深度学习带来的显著性能改进。本文按照经典的两阶段信息检索二分法进行拆分:首先详细描述深度候选生成模型,然后描述单独的深度排序模型。我们还提供了来自设计、迭代和维护具有巨大用户影响的大型推荐系统的实践经验和见解。
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