AdBooster: Personalized Ad Creative Generation using Stable Diffusion Outpainting

September 08, 2023 Β· Declared Dead Β· πŸ› arXiv.org

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Authors Veronika Shilova, Ludovic Dos Santos, Flavian Vasile, GaΓ«tan Racic, Ugo Tanielian arXiv ID 2309.11507 Category cs.IR: Information Retrieval Cross-listed cs.LG Citations 11 Venue arXiv.org Last Checked 4 months ago
Abstract
In digital advertising, the selection of the optimal item (recommendation) and its best creative presentation (creative optimization) have traditionally been considered separate disciplines. However, both contribute significantly to user satisfaction, underpinning our assumption that it relies on both an item's relevance and its presentation, particularly in the case of visual creatives. In response, we introduce the task of {\itshape Generative Creative Optimization (GCO)}, which proposes the use of generative models for creative generation that incorporate user interests, and {\itshape AdBooster}, a model for personalized ad creatives based on the Stable Diffusion outpainting architecture. This model uniquely incorporates user interests both during fine-tuning and at generation time. To further improve AdBooster's performance, we also introduce an automated data augmentation pipeline. Through our experiments on simulated data, we validate AdBooster's effectiveness in generating more relevant creatives than default product images, showing its potential of enhancing user engagement.
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