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Algorithmic copywriting: automated generation of health-related advertisements to improve their performance

机译:算法拷贝写作:自动生成健康相关的广告,以提高他们的性能

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Search advertising, a popular method for online marketing, has been employed to improve health by eliciting positive behavioral change. However, writing effective advertisements requires expertise and experimentation, which may not be available to health authorities wishing to elicit such changes, especially when dealing with public health crises such as epidemic outbreaks. Here, we develop a framework, comprising two neural network models, that automatically generates ads. The framework first employs a generator model, which creates ads from web pages. These ads are then processed by a translation model, which transcribes ads to improve performance. We trained the networks using 114K health-related ads shown on Microsoft Advertising. We measure ad performance using the click-through rates (CTR). Our experiments show that the generated advertisements received approximately the same CTR as human-authored ads. The marginal contribution of the generator model was, on average, 28% lower than that of human-authored ads, while the translator model received, on average, 32% more clicks than human-authored ads. Our analysis shows that, when compared to human-authored ads, both the translator model and the combined generator + translator framework produce ads reflecting higher values of psychological attributes associated with a user action, including higher valence and arousal, and more calls to action. In contrast, levels of these attributes in ads produced by the generator model alone are similar to those of human-authored ads. Our results demonstrate the ability to automatically generate useful advertisements for the health domain. We believe that our work offers health authorities an improved ability to build effective public health advertising campaigns.
机译:搜索广告是一种流行的在线营销方法,通过引发积极行为改变来改善健康。但是,编写有效的广告需要专业知识和实验,这可能无法用于卫生当局希望引起这种变化,特别是在处理疫情爆发等公共卫生危机时。在这里,我们开发一个包含两个神经网络模型的框架,它会自动生成广告。该框架首先采用发电机型号,从网页创建广告。然后通过翻译模型处理这些广告,该模型转录广告以提高性能。我们使用Microsoft广告上显示的114K健康相关广告培训了网络。我们使用点击率(CTR)测量广告性能。我们的实验表明,生成的广告收到了与人工创作广告大致相同的CTR。发电机模型的边际贡献平均低于人工授权广告的28%,而平均接收的翻译模型比人类授权的广告更多32%。我们的分析表明,与人类撰写的广告相比,翻译模型和组合的发电机+翻译框架都产生了反映与用户动作相关的心理属性更高值的广告,包括更高的价值和唤醒,以及更多的动作呼叫。相比之下,由发电机模型产生的广告中的广告中这些属性的水平与人授权广告的广告相似。我们的结果表明,能够自动为健康域生成有用的广告。我们认为,我们的工作提供了卫生当局提高了建立有效的公共卫生广告活动的能力。

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