In digital marketing, experimenting with new website content is one of the key levers to improve customer engagement. However, creating successful marketing content is a manual and time-consuming process that lacks clear guiding principles. This paper seeks to close the loop between content creation and online experimentation by offering marketers AI-driven actionable insights based on historical data to improve their creative process. We present a neural-network-based system that scores and extracts insights from a marketing content design, namely, a multimodal neural network predicts the attractiveness of marketing contents, and a post-hoc attribution method generates actionable insights for marketers to improve their content in specific marketing locations. Our insights not only point out the advantages and drawbacks of a given current content, but also provide design recommendations based on historical data. We show that our scoring model and insights work well both quantitatively and qualitatively.
翻译:在数字营销中,试验新的网站内容是改进客户参与的关键杠杆之一。然而,创造成功的营销内容是一个人工和耗时的过程,缺乏明确的指导原则。本文试图通过向市场商提供基于历史数据的AI驱动的可操作的洞察力,从而结束内容创建和在线实验之间的循环,以改善其创造性过程。我们提出了一个神经网络系统,从营销内容设计中分分和提取见解,即多式联运神经网络预测营销内容的吸引力,以及后热源分配方法为市场商提供了可操作的洞察力,以改进其在特定营销地点的内容。我们的洞察力不仅指出了特定当前内容的利弊,而且还根据历史数据提供了设计建议。我们显示我们的评分模型和洞察效果在数量和质量上都很好。