Boost CTR Prediction for New Advertisements via Modeling Visual Content
Tan Yu, Zhipeng Jin, Jie Liu, Yi Yang, Hongliang Fei, Ping Li

TL;DR
This paper introduces a visual content-based approach to improve CTR prediction for new ads by mapping visual content into IDs and learning embeddings, enhancing prediction accuracy without relying on historical user interaction data.
Contribution
The paper proposes a supervised quantization method using textual descriptions to generate visual IDs, enabling effective CTR prediction for new ads without prior user interaction data.
Findings
CTR improves by 1.46% with visual ID integration
Total charge increases by 1.10% after applying the method
Visual IDs generalize well to new advertisements
Abstract
Existing advertisements click-through rate (CTR) prediction models are mainly dependent on behavior ID features, which are learned based on the historical user-ad interactions. Nevertheless, behavior ID features relying on historical user behaviors are not feasible to describe new ads without previous interactions with users. To overcome the limitations of behavior ID features in modeling new ads, we exploit the visual content in ads to boost the performance of CTR prediction models. Specifically, we map each ad into a set of visual IDs based on its visual content. These visual IDs are further used for generating the visual embedding for enhancing CTR prediction models. We formulate the learning of visual IDs into a supervised quantization problem. Due to a lack of class labels for commercial images in advertisements, we exploit image textual descriptions as the supervision to optimize…
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Taxonomy
TopicsRecommender Systems and Techniques · Sentiment Analysis and Opinion Mining · Image Retrieval and Classification Techniques
