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Hauptverfasser: Gu, Qiaolei, Li, Yu, Zeng, DingYi, Wang, Lu, Pang, Ming, Peng, Changping, Lin, Zhangang, Law, Ching, Shao, Jingping
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2508.09730
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author Gu, Qiaolei
Li, Yu
Zeng, DingYi
Wang, Lu
Pang, Ming
Peng, Changping
Lin, Zhangang
Law, Ching
Shao, Jingping
author_facet Gu, Qiaolei
Li, Yu
Zeng, DingYi
Wang, Lu
Pang, Ming
Peng, Changping
Lin, Zhangang
Law, Ching
Shao, Jingping
contents In e-commerce advertising, selecting the most compelling combination of creative elements -- such as titles, images, and highlights -- is critical for capturing user attention and driving conversions. However, existing methods often evaluate creative components individually, failing to navigate the exponentially large search space of possible combinations. To address this challenge, we propose a novel framework named GenCO that integrates generative modeling with multi-instance reward learning. Our unified two-stage architecture first employs a generative model to efficiently produce a diverse set of creative combinations. This generative process is optimized with reinforcement learning, enabling the model to effectively explore and refine its selections. Next, to overcome the challenge of sparse user feedback, a multi-instance learning model attributes combination-level rewards, such as clicks, to the individual creative elements. This allows the reward model to provide a more accurate feedback signal, which in turn guides the generative model toward creating more effective combinations. Deployed on a leading e-commerce platform, our approach has significantly increased advertising revenue, demonstrating its practical value. Additionally, we are releasing a large-scale industrial dataset to facilitate further research in this important domain.
format Preprint
id arxiv_https___arxiv_org_abs_2508_09730
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Generative Modeling with Multi-Instance Reward Learning for E-commerce Creative Optimization
Gu, Qiaolei
Li, Yu
Zeng, DingYi
Wang, Lu
Pang, Ming
Peng, Changping
Lin, Zhangang
Law, Ching
Shao, Jingping
Machine Learning
In e-commerce advertising, selecting the most compelling combination of creative elements -- such as titles, images, and highlights -- is critical for capturing user attention and driving conversions. However, existing methods often evaluate creative components individually, failing to navigate the exponentially large search space of possible combinations. To address this challenge, we propose a novel framework named GenCO that integrates generative modeling with multi-instance reward learning. Our unified two-stage architecture first employs a generative model to efficiently produce a diverse set of creative combinations. This generative process is optimized with reinforcement learning, enabling the model to effectively explore and refine its selections. Next, to overcome the challenge of sparse user feedback, a multi-instance learning model attributes combination-level rewards, such as clicks, to the individual creative elements. This allows the reward model to provide a more accurate feedback signal, which in turn guides the generative model toward creating more effective combinations. Deployed on a leading e-commerce platform, our approach has significantly increased advertising revenue, demonstrating its practical value. Additionally, we are releasing a large-scale industrial dataset to facilitate further research in this important domain.
title Generative Modeling with Multi-Instance Reward Learning for E-commerce Creative Optimization
topic Machine Learning
url https://arxiv.org/abs/2508.09730