论文标题
视频推荐的观察时间预测中的持续时间偏差
Deconfounding Duration Bias in Watch-time Prediction for Video Recommendation
论文作者
论文摘要
观看时间预测仍然是通过视频建议加强用户参与度的关键因素。鉴于在线视频的不断增长,它变得越来越重要。但是,手表时间的预测不仅取决于用户和视频之间的匹配,而且经常被视频本身的持续时间误导。为了改善观看时间,建议始终对持续时间长的视频有偏见。在此不平衡数据上训练的模型面临着偏见放大的风险,该模型将平台误导为长时间持续时间过多的视频,但忽略了基本的用户兴趣。 本文介绍了在观察时间预测中研究视频推荐中持续时间偏见的第一项工作。我们采用了一个因果图,表明持续时间是同时影响视频曝光和观察时间预测的混杂因素 - 对视频的第一个效果引起了偏见问题,应消除观看时间的第二影响,而对观看时间的第二影响则来自视频内在特征,应保留。为了消除不需要的偏见,但利用自然效果,我们提出了持续时间反污染的基于分数(D2Q)观察时间预测框架,从而可以在行业生产系统上执行可伸缩性。通过广泛的离线评估和实时实验,我们通过显着优于最先进的基线,展示了这种持续时间解决框架的有效性。我们已经在Kuaishou应用程序上完全启动了我们的方法,该应用程序由于更准确的观察时间预测而大大改善了实时视频消费。
Watch-time prediction remains to be a key factor in reinforcing user engagement via video recommendations. It has become increasingly important given the ever-growing popularity of online videos. However, prediction of watch time not only depends on the match between the user and the video but is often mislead by the duration of the video itself. With the goal of improving watch time, recommendation is always biased towards videos with long duration. Models trained on this imbalanced data face the risk of bias amplification, which misguides platforms to over-recommend videos with long duration but overlook the underlying user interests. This paper presents the first work to study duration bias in watch-time prediction for video recommendation. We employ a causal graph illuminating that duration is a confounding factor that concurrently affects video exposure and watch-time prediction -- the first effect on video causes the bias issue and should be eliminated, while the second effect on watch time originates from video intrinsic characteristics and should be preserved. To remove the undesired bias but leverage the natural effect, we propose a Duration Deconfounded Quantile-based (D2Q) watch-time prediction framework, which allows for scalability to perform on industry production systems. Through extensive offline evaluation and live experiments, we showcase the effectiveness of this duration-deconfounding framework by significantly outperforming the state-of-the-art baselines. We have fully launched our approach on Kuaishou App, which has substantially improved real-time video consumption due to more accurate watch-time predictions.