Multi-Modal Generative Adversarial Network for Short Product Title Generation in Mobile E-Commerce
This addresses the need for better product display on mobile screens for e-commerce platforms, representing an incremental improvement over previous text-only methods.
The paper tackles the problem of generating concise product titles for mobile e-commerce by proposing a Multi-Modal Generative Adversarial Network (MM-GAN) that incorporates image, attribute, and textual information, resulting in improved click-through and conversion rates by 1.66% and 1.87% in online deployment.
Nowadays, more and more customers browse and purchase products in favor of using mobile E-Commerce Apps such as Taobao and Amazon. Since merchants are usually inclined to describe redundant and over-informative product titles to attract attentions from customers, it is important to concisely display short product titles on limited screen of mobile phones. To address this discrepancy, previous studies mainly consider textual information of long product titles and lacks of human-like view during training and evaluation process. In this paper, we propose a Multi-Modal Generative Adversarial Network (MM-GAN) for short product title generation in E-Commerce, which innovatively incorporates image information and attribute tags from product, as well as textual information from original long titles. MM-GAN poses short title generation as a reinforcement learning process, where the generated titles are evaluated by the discriminator in a human-like view. Extensive experiments on a large-scale E-Commerce dataset demonstrate that our algorithm outperforms other state-of-the-art methods. Moreover, we deploy our model into a real-world online E-Commerce environment and effectively boost the performance of click through rate and click conversion rate by 1.66% and 1.87%, respectively.