计算机科学
排名(信息检索)
任务(项目管理)
嵌入
推荐系统
情报检索
服务(商务)
点击率
产品(数学)
机器学习
人工智能
人机交互
数学
经济
经济
管理
几何学
作者
Shulong Tan,Meifang Li,Weijie Zhao,Yandan Zheng,Xin Pei,Ping Li
标识
DOI:10.1109/bigdata52589.2021.9671920
摘要
Online advertising and recommender systems often pose a multi-task problem, which tries to predict not only users’ click-through rate (CTR) but also the post-click conversion rate (CVR). Meanwhile, multi-functional information systems commonly provide multiple service scenarios for users, such as news feed, search engine and product suggestions. Users may leave similar interest information across various service scenarios. Thus the prediction/ranking model should be conducted in a multi-scene manner. This paper develops a unified r a nking m o del for this multi-task and multi-scene problem. Compared to previous works, our model explores independent/non-shared embeddings for each task and scene, which reduces the coupling between tasks and scenes. New tasks or scenes could be added easily. Besides, a simplified n e twork i s c h osen b e yond t h e embedding layer, which largely improves the ranking efficiency f o r online services. Extensive offline a n d o n line e x periments demonstrated the superiority of the proposed unified r a nking model.
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