Can Pretrained Language Models Generate Persuasive, Faithful, and Informative Ad Text for Product Descriptions?

Fajri Koto, Jey Han Lau, Timothy Baldwin
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引用次数: 7

Abstract

For any e-commerce service, persuasive, faithful, and informative product descriptions can attract shoppers and improve sales. While not all sellers are capable of providing such interesting descriptions, a language generation system can be a source of such descriptions at scale, and potentially assist sellers to improve their product descriptions. Most previous work has addressed this task based on statistical approaches (Wang et al., 2017), limited attributes such as titles (Chen et al., 2019; Chan et al., 2020), and focused on only one product type (Wang et al., 2017; Munigala et al., 2018; Hong et al., 2021). In this paper, we jointly train image features and 10 text attributes across 23 diverse product types, with two different target text types with different writing styles: bullet points and paragraph descriptions. Our findings suggest that multimodal training with modern pretrained language models can generate fluent and persuasive advertisements, but are less faithful and informative, especially out of domain.
预训练的语言模型能生成有说服力的、忠实的、信息丰富的产品描述广告文本吗?
对于任何电子商务服务来说,有说服力的、忠实的、信息丰富的产品描述都能吸引顾客,提高销售额。虽然不是所有的卖家都有能力提供如此有趣的描述,但语言生成系统可以成为大规模描述的来源,并有可能帮助卖家改进他们的产品描述。之前的大多数工作都是基于统计方法(Wang et al., 2017)和有限的属性(如标题)来解决这个问题的(Chen et al., 2019;Chan et al., 2020),并且只关注一种产品类型(Wang et al., 2017;Munigala et al., 2018;Hong et al., 2021)。在本文中,我们共同训练了23种不同产品类型的图像特征和10个文本属性,使用了两种不同的写作风格的目标文本类型:项目符号和段落描述。我们的研究结果表明,使用现代预训练语言模型进行多模式训练可以生成流畅和有说服力的广告,但缺乏可信度和信息量,特别是在域外。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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