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Consumer Neuroscience-Based Metrics Predict Recall Liking and Viewing Rates in Online Advertising

机译:基于消费者神经科学的指标可预测在线广告的召回率喜欢率和观看率

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摘要

The purpose of the present study is to investigate whether the effectiveness of a new ad on digital channels (YouTube) can be predicted by using neural networks and neuroscience-based metrics (brain response, heart rate variability and eye tracking). Neurophysiological records from 35 participants were exposed to 8 relevant TV Super Bowl commercials. Correlations between neurophysiological-based metrics, ad recall, ad liking, the ACE metrix score and the number of views on YouTube during a year were investigated. Our findings suggest a significant correlation between neuroscience metrics and self-reported of ad effectiveness and the direct number of views on the YouTube channel. In addition, and using an artificial neural network based on neuroscience metrics, the model classifies (82.9% of average accuracy) and estimate the number of online views (mean error of 0.199). The results highlight the validity of neuromarketing-based techniques for predicting the success of advertising responses. Practitioners can consider the proposed methodology at the design stages of advertising content, thus enhancing advertising effectiveness. The study pioneers the use of neurophysiological methods in predicting advertising success in a digital context. This is the first article that has examined whether these measures could actually be used for predicting views for advertising on YouTube.
机译:本研究的目的是调查是否可以通过使用神经网络和基于神经科学的指标(大脑反应,心率变异性和眼动追踪)来预测新广告在数字渠道(YouTube)上的效果。来自35位参与者的神经生理学记录暴露于8个相关的电视超级碗广告中。研究了基于神经生理学的指标,广告回忆,广告喜好,ACE metrix得分和一年中YouTube观看次数之间的相关性。我们的发现表明,神经科学指标与广告效果的自我报告与YouTube频道的直接观看次数之间存在显着相关性。此外,该模型使用基于神经科学指标的人工神经网络进行分类(平均准确度的82.9%)并估计在线观看次数(平均误差为0.199)。结果突出了基于神经营销技术预测广告响应成功的有效性。从业人员可以在广告内容的设计阶段考虑提议的方法,从而提高广告效果。这项研究率先使用神经生理学方法来预测数字环境下的广告成功。这是第一篇文章,探讨了这些措施是否可以实际用于预测YouTube广告的观看次数。

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