Recommendation Systems for Ad Creation: A View from the Trenches

Manisha Verma, Shaunak Mishra
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引用次数: 2

Abstract

Creative design is one of the key components of generating engaging content on the web. E-commerce websites need engaging product descriptions, social networks require user posts to have different types of content such as videos, images and hashtags, and traditional media formats such as blogs require content creators to constantly innovate their writing style, and choice of content they publish to engage with their intended audience. Designing the right content, irrespective of the industry, is a time consuming task, often requires several iterations of content selection and modification. Advertising is one such industry where content is the key to capture user interest and generate revenue. Designing engaging and attention grabbing advertisements requires extensive domain knowledge and market trend awareness. This motivates companies to hire marketing specialists to design specific advertising content, most often tasked to create text, image or video advertisements. This process is tedious and iterative which limits the amount of content that can be produced manually. In this talk, we summarize our work focused on automating ad creative design by leveraging state of the art approaches in text mining, ranking, generation, multimodal (visual-linguistic) representations, multilingual text understanding, and recommendation. We discuss how such approaches can help to reduce the time spent on designing ads, and showcase their impact on real world advertising systems and metrics.
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广告创作的推荐系统:来自战壕的观点
创意设计是在网络上生成引人入胜的内容的关键组成部分之一。电子商务网站需要引人入胜的产品描述,社交网络要求用户帖子包含不同类型的内容,如视频、图像和标签,而博客等传统媒体格式要求内容创作者不断创新写作风格,并选择发布的内容,以吸引目标受众。设计正确的内容,无论在哪个行业,都是一项耗时的任务,通常需要多次的内容选择和修改。广告就是这样一个行业,内容是吸引用户兴趣和产生收入的关键。设计吸引眼球的广告需要广泛的领域知识和市场趋势意识。这促使公司聘请营销专家来设计特定的广告内容,最常见的任务是创建文本、图像或视频广告。这个过程冗长且反复,限制了手工制作的内容数量。在这次演讲中,我们总结了我们在自动化广告创意设计方面的工作,通过利用文本挖掘、排名、生成、多模态(视觉语言)表示、多语言文本理解和推荐等最先进的方法。我们将讨论这些方法如何帮助减少花在设计广告上的时间,并展示它们对现实世界广告系统和指标的影响。
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