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A New Method to Aid Copy Testing of Paid Search Text Advertisements

机译:一种新的付费搜索文字广告的拷贝测试方法

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摘要

The authors propose a new approach to evaluate the perceptions and performance of a large set of paid search ads. This approach consists of two parts. First, primary data on hundreds of ads are collected through paired comparisons of their relative ability to generate awareness, interest, desire, action, and click performance. The authors use the Elo algorithm, a statistical model calibrated on paired comparisons, to score the full set of ads on relative perceptions and click performance. The estimated scores validate the theoretical link between perceptions and performance. Second, the authors predict the perceptions and performance of new ads relative to the existing set using textual contentmetrics. The predictivemodel allows for direct effects and interactions of the text metrics, resulting in a "large p, small n" problem. They address this problem with a novel Bayesian implementation of the VANISH model, a penalized regression approach that allows for differential treatment of main and interaction effects, in a system of equations. The authors demonstrate that this approach ably forecasts relative ad performance by leveraging perceptions inferred from content alone.
机译:作者提出了一种评估大量付费搜索广告的感知和效果的新方法。此方法包括两个部分。首先,通过成对比较它们产生认知度,兴趣,欲望,动作和点击效果的相对能力来收集数百个广告的主要数据。作者使用Elo算法(一种根据配对比较进行校准的统计模型)对相对于整体感知和点击效果的完整广告进行评分。估计分数验证了感知和绩效之间的理论联系。其次,作者使用文本内容指标来预测新广告相对于现有广告的感知和效果。预测模型允许文本量度的直接影响和交互作用,从而导致“大p,小n”问题。他们用VANISH模型的新颖贝叶斯实现方法解决了这个问题,这是一种惩罚回归方法,可以在方程组中对主效应和相互作用效应进行差分处理。作者证明,这种方法通过利用仅从内容推断出的感知能力,可以合理地预测相对广告效果。

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