论文标题
大规模在线视频服务中的基于多段的多幕科推荐
Multi-Graph based Multi-Scenario Recommendation in Large-scale Online Video Services
论文作者
论文摘要
最近,深度学习方法的不断升级增强了工业推荐服务。但是,他们仍然面临着偏见的挑战,例如暴露偏见和寒冷的问题,在该问题上,机器学习训练对人类相互作用史的循环会导致算法反复提出暴露的物品,同时忽略较小活动的物品。多幕平台中存在其他问题,例如从子公司情景中的适当数据融合,我们可以通过消息传递来通过图形结构化数据集成来缓解这些融合。 在本文中,我们提出了一个多画像结构化的多阶段推荐解决方案,该解决方案封装了各场景中的相互作用数据,并通过图形学习获得表示。 Extensive offline and online experiments on real-world datasets are conducted where the proposed method demonstrates an increase of 0.63% and 0.71% in CTR and Video Views per capita on new users over deployed set of baselines and outperforms regular method in increasing the number of outer-scenario videos by 25% and video watches by 116%, validating its superiority in activating cold videos and enriching target recommendation.
Recently, industrial recommendation services have been boosted by the continual upgrade of deep learning methods. However, they still face de-biasing challenges such as exposure bias and cold-start problem, where circulations of machine learning training on human interaction history leads algorithms to repeatedly suggest exposed items while ignoring less-active ones. Additional problems exist in multi-scenario platforms, e.g. appropriate data fusion from subsidiary scenarios, which we observe could be alleviated through graph structured data integration via message passing. In this paper, we present a multi-graph structured multi-scenario recommendation solution, which encapsulates interaction data across scenarios with multi-graph and obtains representation via graph learning. Extensive offline and online experiments on real-world datasets are conducted where the proposed method demonstrates an increase of 0.63% and 0.71% in CTR and Video Views per capita on new users over deployed set of baselines and outperforms regular method in increasing the number of outer-scenario videos by 25% and video watches by 116%, validating its superiority in activating cold videos and enriching target recommendation.