Multi-modal Dictionary BERT for Cross-modal Video Search in Baidu Advertising

Tan Yu, Yi Yang, Yi Li, Lin Liu, Mingming Sun, Ping Li
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引用次数: 10

Abstract

Due to their attractiveness, video advertisements are adored by advertisers. Baidu, as one of the leading search advertisement platforms in China, is putting more and more effort into video advertisements for its advertisement customers. Search-based video advertisement display is, in essence, a cross-modal retrieval problem, which is normally tackled through joint embedding methods. Nevertheless, due to the lack of interactions between text features and image features, joint embedding methods cannot achieve as high accuracy as its counterpart based on attention. Inspired by the great success achieved by BERT in NLP tasks, many cross-modal BERT models emerge and achieve excellent performance in cross-modal retrieval. Last year, Baidu also launched a cross-modal BERT, CAN, in video advertisement platform, and achieved considerably better performance than the previous joint-embedding model. In this paper, we present our recent work for video advertisement retrieval, Multi-modal Dictionary BERT (MDBERT) model. Compared with CAN and other cross-modal BERT models, MDBERT integrates a joint dictionary, which is shared among video features and word features. It maps the relevant word features and video features into the same codeword and thus fosters effective cross-modal attention. To support end-to-end training, we propose to soften the codeword assignment. Meanwhile, to enhance the inference efficiency, we adopt the product quantization to achieve fine-level feature space partition at a low cost. After launching MDBERT in Baidu video advertising platform, the conversion ratio (CVR) increases by 3.34%, bringing a considerable revenue boost for advertisers in Baidu.
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百度广告跨模态视频搜索的多模态词典BERT
视频广告因其吸引力受到广告主的青睐。百度作为中国领先的搜索广告平台之一,正越来越多地为其广告客户投入视频广告。基于搜索的视频广告展示本质上是一个跨模态检索问题,通常通过联合嵌入方法来解决。然而,由于缺乏文本特征和图像特征之间的交互作用,联合嵌入方法无法达到基于注意力的联合嵌入方法的高准确率。受BERT在NLP任务中取得的巨大成功的启发,出现了许多跨模态BERT模型,并在跨模态检索中取得了优异的性能。去年,百度还在视频广告平台上推出了跨模态BERT CAN,并取得了比之前联合嵌入模型好得多的性能。在本文中,我们介绍了我们最近在视频广告检索方面的工作,多模态字典BERT (MDBERT)模型。与CAN和其他跨模态BERT模型相比,MDBERT集成了一个联合字典,在视频特征和词特征之间共享。它将相关的单词特征和视频特征映射到同一个码字中,从而促进有效的跨模态注意。为了支持端到端训练,我们建议软化码字分配。同时,为了提高推理效率,我们采用了积量化,以低成本实现了精细级别的特征空间划分。MDBERT在百度视频广告平台上线后,转化率(CVR)提高了3.34%,为百度的广告主带来了可观的收入提升。
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