推荐一个具有异构内容的多边市场

Yuyan Wang, Long Tao, Xian-Xing Zhang
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引用次数: 2

摘要

如今,许多在线个性化平台在由消费者、商家和其他合作伙伴组成的多边市场中推荐异质内容。要使推荐系统在这些环境中取得成功,它面临两个主要挑战。首先,市场中的每一方都有不同的、潜在冲突的效用。因此,推荐一个多边市场需要共同优化多个目标和权衡。其次,现成的推荐算法不适用于异构内容空间,在异构内容空间中,推荐项目可能是其他推荐项目的聚合。在这项工作中,我们为具有异构和分层内容的多边市场中的推荐系统开发了一个通用框架。我们提出了一个约束优化框架,其中每个目标的机器学习模型作为输入,以及用户在异构内容上的参与模式的概率结构模型。我们提出的结构建模方法确保了跨不同级别的内容聚合的一致用户体验,并为商家和内容提供者提供了不同级别的透明度。我们进一步开发了一种高效的优化解决方案,用于大规模在线系统的实时排名和推荐。我们在Uber Eats实施了这个框架,Uber Eats是世界上最大的在线外卖平台之一,也是一个由食客、餐厅合作伙伴和外卖合作伙伴组成的三方市场。在线实验证明了我们的框架在对异构内容进行排名和对市场三方进行优化方面的有效性。我们的框架已经作为Uber Eats主页的推荐算法在全球部署。
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Recommending for a multi-sided marketplace with heterogeneous contents
Many online personalization platforms today are recommending heterogeneous contents in a multi-sided marketplace consisting of consumers, merchants and other partners. For a recommender system to be successful in these contexts, it faces two main challenges. First, each side in the marketplace has different and potentially conflicting utilities. Recommending for a multi-sided marketplace therefore entails jointly optimizing multiple objectives with trade-offs. Second, the off-the-shelf recommendation algorithms are not applicable to the heterogeneous content space, where a recommendation item could be an aggregation of other recommendation items. In this work, we develop a general framework for recommender systems in a multi-sided marketplace with heterogeneous and hierarchical contents. We propose a constrained optimization framework with machine learning models for each objective as inputs, and a probabilistic structural model for users’ engagement patterns on heterogeneous contents. Our proposed structural modeling approach ensures consistent user experience across different levels of aggregation of the contents, and provides levels of transparency to the merchants and content providers. We further develop an efficient optimization solution for ranking and recommendation in large-scale online systems in real time. We implement the framework at Uber Eats, one of the largest online food delivery platforms in the world and a three-sided marketplace consisting of eaters, restaurant partners and delivery partners. Online experiments demonstrate the effectiveness of our framework in ranking heterogeneous contents and optimizing for the three sides in the marketplace. Our framework has been deployed globally as the recommendation algorithm for Uber Eats’ homepage.
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