Integrating Visual Transformer and Graph Neural Network for Visual Analysis in Digital Marketing

Yingna Chao, Hongfeng Zhu, Yueding Zhou
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Abstract

In today's digital economy, digital marketing has become a crucial means for businesses to drive growth and enhance brand exposure. However, with increasing competition, predicting and optimizing advertising effectiveness has become a pivotal component in formulating digital marketing strategies. In order to better understand ad creatives and deeply explore the information within them, this study focuses on integrating visual transformer (VIT) and graph neural network (GNN) methods. Additionally, the study leverages generative adversarial networks (GAN) to enhance the quality of visual features, aiming to achieve visual analysis, exploration, and prediction of advertising effectiveness in digital marketing. This approach begins by employing VIT, an emerging visual transformer technology, to transform image information into high-dimensional feature representations.
整合视觉转换器和图神经网络,实现数字营销中的视觉分析
在当今的数字经济时代,数字营销已成为企业推动增长和提高品牌曝光度的重要手段。然而,随着竞争的日益激烈,预测和优化广告效果已成为制定数字营销战略的关键要素。为了更好地理解广告创意并深入挖掘其中的信息,本研究重点整合了视觉转换器(VIT)和图神经网络(GNN)方法。此外,本研究还利用生成对抗网络(GAN)来提高视觉特征的质量,旨在实现数字营销中广告效果的视觉分析、探索和预测。这种方法首先采用新兴的视觉转换器技术 VIT,将图像信息转换为高维特征表示。
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