Peloton的及时个性化:一种促进时间相关内容的系统和算法

Shayak Banerjee, Vijay Pappu, N. Talukder, Shoya Yoshida, Arnab Bhadury, Allison Schloss, Jasmine Paulino
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引用次数: 0

摘要

在Peloton,我们面临的挑战不仅是向会员提供相关的健身课程建议,还要及时提供建议。随着我们健身内容库的扩展,我们不断推出在狭窄的时间窗口内最及时的特定主题课程。为了应对这一挑战,我们对外部利益相关者(如生产和营销团队)的建议提供了一些控制。他们会在与自己相关的时间段内进入特定课程的定时提升。我们已经建立了算法来获取这些理想的类别,并提高他们的印象数量,同时保持会员对我们推荐的参与。在本文中,我们讨论了系统,算法和一些a /B测试的结果,展示了在实践中如何增强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Timely Personalization at Peloton: A System and Algorithm for Boosting Time-Relevant Content
At Peloton, we are challenged to not just surface relevant recommendations of fitness classes to our members, but also timely ones. As our fitness content library expands, we continually produce classes on certain themes which are most timely during a narrow time window. To address this challenge, we provide some control over our recommendations to external stakeholders, such as production and marketing teams. They enter timed boosts of certain classes during the windows they are relevant in. We have built out algorithms which take these desired classes and elevate the number of impressions for them, while preserving members’ engagement with our recommendations. In this paper, we discuss the system, the algorithms and some results from a few A/B tests showing how boosting works in practice.
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