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AdGazer:利用理论指导的机器学习改进情境广告

AdGazer: Improving Contextual Advertising with Theory-Informed Machine Learning

Journal of Marketing · 2025
被引 0
人大 AFT50UTD24ABS 4*

中文导读

提出AdGazer机器学习程序,结合理论框架和特征工程,利用眼动追踪数据预测广告和品牌关注度,优化广告与媒体情境的匹配,对广告从业者具有实用价值。

Abstract

Contextual advertising involves matching features of ads to features of the media context where they appear. The authors propose AdGazer, a new machine learning procedure to support contextual advertising. It comprises a theoretical framework organizing high- and low-level features of ads and contexts, feature engineering models grounded in this framework, an XGBoost model predicting ad and brand attention, and an algorithm optimally assigning ads to contexts. AdGazer includes a multimodal large language model to extract high-level topics predicting the ad–context match. This research uses a unique eye-tracking database containing 3,531 digital display ads and their contexts, and aggregate ad and brand gaze times. The authors compare AdGazer’s predictive performance with that of two feature learning models, VGG16 and ResNet50. AdGazer predicts highly accurately with holdout correlations of .83 for ad gaze and .80 for brand gaze, outperforming both feature learning models and generalizing better to out-of-distribution ads. Context features jointly contributed at least 33% to predicted ad gaze and about 20% to predicted brand gaze, good news for managers practicing or considering contextual advertising. The authors demonstrate that the theory-informed AdGazer effectively matches ads to advertising vehicles and their contexts, optimizing ad gaze more than current practice and alternatives like text-based and native contextual advertising.

情境广告机器学习特征工程眼动追踪广告匹配