The advancement of the communication technology and the popularity of the smart phones foster the booming of video ads. Baidu, as one of the leading search engine companies in the world, receives billions of search queries per day. How to pair the video ads with the user search is the core task of Baidu video advertising. Due to the modality gap, the query-to-video retrieval is much more challenging than traditional query-to-document retrieval and image-to-image search. Traditionally, the query-to-video retrieval is tackled by the query-to-title retrieval, which is not reliable when the quality of tiles are not high. With the rapid progress achieved in computer vision and natural language processing in recent years, content-based search methods becomes promising for the query-to-video retrieval. Benefited from pretraining on large-scale datasets, some visionBERT methods based on cross-modal attention have achieved excellent performance in many vision-language tasks not only in academia but also in industry. Nevertheless, the expensive computation cost of cross-modal attention makes it impractical for large-scale search in industrial applications. In this work, we present a tree-based combo-attention network (TCAN) which has been recently launched in Baidu's dynamic video advertising platform. It provides a practical solution to deploy the heavy cross-modal attention for the large-scale query-to-video search. After launching tree-based combo-attention network, click-through rate gets improved by 2.29\% and conversion rate get improved by 2.63\%.
翻译:通信技术的进步和智能手机的普及促进了视频广告的兴起。 Baidu作为世界上领先的搜索引擎公司之一,每天接收数十亿次搜索询问。Baidu是Baidu视频广告的核心任务。由于模式上的差距,查询到视频的检索比传统的逐字检索和图像到图像搜索更具有挑战性。传统上,查询到视频的检索是通过查询到标题的检索来解决的,当瓷砖质量不高时,这种检索是不可靠的。随着近年来计算机愿景和自然语言处理方面的快速进展,基于内容的搜索方法对于查询到视频的检索具有希望。从大规模数据集的预先培训中获益,一些基于跨式关注的视觉BERT方法不仅在学术界而且行业的许多愿景语言任务中取得了出色的表现。然而,跨式关注的计算成本昂贵使得大规模搜索在工业应用中变得不可靠。在这项工作中,随着计算机转换和自然语言处理的快速进展,基于内容的搜索方法对于查询到视频检索的检索是很有希望的。我们从大规模规模的在线搜索速度,通过一个基于双级双级的在线搜索网络,通过最近推出的大规模在线搜索速度,通过双层搜索网络提供重的在线搜索。