超越相关性:通过个性化短视频搜索提高用户参与度

Wentian Bao, Hu Liu, Kai Zheng, Chao Zhang, Shunyu Zhang, Enyun Yu, Wenwu Ou, Yang Song
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引用次数: 0

摘要

个性化搜索已在网络搜索、电子商务、社交网络等各种应用中得到广泛研究。随着以嘀嗒和快手为代表的短视频平台的迅速普及,人们不禁要问:个性化能否提升短视频搜索的境界?在这项工作中,我们介绍了$\text{PR}^2$--一种新颖而全面的短视频搜索个性化解决方案,其中$\text{PR}^2$代表个性化检索和排名增强搜索系统。具体来说,$text{PR}^2$ 利用查询相关协同过滤和个性化密集检索,从大规模视频语料库中提取相关的、个性化的内容。此外,它还利用 QIN(Query-Dominate UserInterest Network,查询主导用户兴趣网络)排名模型,有效利用用户的长期偏好和实时行为,并通过多任务学习框架从用户的各种隐性反馈中高效地学习。通过在生产系统中部署$text{PR}^2$,我们实现了近年来最显著的用户管理改进:CTR@10提高了10.2%,视频观看时间显著增加了20%,搜索DAU提高了1.6%。我们相信,这项工作中提出的实用见解对于构建和改进短视频平台的个性化搜索系统尤其有价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Beyond Relevance: Improving User Engagement by Personalization for Short-Video Search
Personalized search has been extensively studied in various applications, including web search, e-commerce, social networks, etc. With the soaring popularity of short-video platforms, exemplified by TikTok and Kuaishou, the question arises: can personalization elevate the realm of short-video search, and if so, which techniques hold the key? In this work, we introduce $\text{PR}^2$, a novel and comprehensive solution for personalizing short-video search, where $\text{PR}^2$ stands for the Personalized Retrieval and Ranking augmented search system. Specifically, $\text{PR}^2$ leverages query-relevant collaborative filtering and personalized dense retrieval to extract relevant and individually tailored content from a large-scale video corpus. Furthermore, it utilizes the QIN (Query-Dominate User Interest Network) ranking model, to effectively harness user long-term preferences and real-time behaviors, and efficiently learn from user various implicit feedback through a multi-task learning framework. By deploying the $\text{PR}^2$ in production system, we have achieved the most remarkable user engagement improvements in recent years: a 10.2% increase in CTR@10, a notable 20% surge in video watch time, and a 1.6% uplift of search DAU. We believe the practical insights presented in this work are valuable especially for building and improving personalized search systems for the short video platforms.
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