A New Creative Generation Pipeline for Click-Through Rate with Stable
Diffusion Model
- URL: http://arxiv.org/abs/2401.10934v1
- Date: Wed, 17 Jan 2024 03:27:39 GMT
- Title: A New Creative Generation Pipeline for Click-Through Rate with Stable
Diffusion Model
- Authors: Hao Yang, Jianxin Yuan, Shuai Yang, Linhe Xu, Shuo Yuan, Yifan Zeng
- Abstract summary: Traditional AI-based approaches face the same problem of not considering user information while having limited aesthetic knowledge from designers.
To optimize the results, the generated creatives in traditional methods are then ranked by another module named creative ranking model.
This paper proposes a new automated Creative Generation pipeline for Click-Through Rate (CG4CTR) with the goal of improving CTR during the creative generation stage.
- Score: 8.945197427679924
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In online advertising scenario, sellers often create multiple creatives to
provide comprehensive demonstrations, making it essential to present the most
appealing design to maximize the Click-Through Rate (CTR). However, sellers
generally struggle to consider users preferences for creative design, leading
to the relatively lower aesthetics and quantities compared to Artificial
Intelligence (AI)-based approaches. Traditional AI-based approaches still face
the same problem of not considering user information while having limited
aesthetic knowledge from designers. In fact that fusing the user information,
the generated creatives can be more attractive because different users may have
different preferences. To optimize the results, the generated creatives in
traditional methods are then ranked by another module named creative ranking
model. The ranking model can predict the CTR score for each creative
considering user features. However, the two above stages are regarded as two
different tasks and are optimized separately. In this paper, we proposed a new
automated Creative Generation pipeline for Click-Through Rate (CG4CTR) with the
goal of improving CTR during the creative generation stage. Our contributions
have 4 parts: 1) The inpainting mode in stable diffusion is firstly applied to
creative generation task in online advertising scene. A self-cyclic generation
pipeline is proposed to ensure the convergence of training. 2) Prompt model is
designed to generate individualized creatives for different user groups, which
can further improve the diversity and quality. 3) Reward model comprehensively
considers the multimodal features of image and text to improve the
effectiveness of creative ranking task, and it is also critical in self-cyclic
pipeline. 4) The significant benefits obtained in online and offline
experiments verify the significance of our proposed method.
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