Interactive Latent Knowledge Selection for E-Commerce Product Copywriting Generation

Zeming Wang, Yanyan Zou, Yuejian Fang, Hongshen Chen, Mian Ma, Zhuoye Ding, Bo Long
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引用次数: 2

Abstract

As the multi-modal e-commerce is thriving, high-quality advertising product copywriting has gain more attentions, which plays a crucial role in the e-commerce recommender, advertising and even search platforms.The advertising product copywriting is able to enhance the user experience by highlighting the product’s characteristics with textual descriptions and thus to improve the likelihood of user click and purchase. Automatically generating product copywriting has attracted noticeable interests from both academic and industrial communities, where existing solutions merely make use of a product’s title and attribute information to generate its corresponding description.However, in addition to the product title and attributes, we observe that there are various auxiliary descriptions created by the shoppers or marketers in the e-commerce platforms (namely human knowledge), which contains valuable information for product copywriting generation, yet always accompanying lots of noises.In this work, we propose a novel solution to automatically generating product copywriting that involves all the title, attributes and denoised auxiliary knowledge.To be specific, we design an end-to-end generation framework equipped with two variational autoencoders that works interactively to select informative human knowledge and generate diverse copywriting.
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电子商务产品文案生成的交互隐性知识选择
随着多模式电子商务的蓬勃发展,高质量的广告产品文案越来越受到人们的关注,在电子商务的推荐、广告甚至搜索平台中发挥着至关重要的作用。广告产品文案可以通过文字描述突出产品特点,增强用户体验,从而提高用户点击和购买的可能性。自动生成产品文案吸引了学术界和工业界的注意,现有的解决方案只是利用产品的标题和属性信息来生成相应的描述。然而,我们观察到,除了产品的标题和属性之外,电子商务平台上还有消费者或营销人员创造的各种辅助描述(即人类知识),这些描述包含了对产品文案生成有价值的信息,但总是伴随着大量的噪音。在这项工作中,我们提出了一种新的解决方案来自动生成包含所有标题,属性和去噪辅助知识的产品文案。具体来说,我们设计了一个端到端生成框架,配备了两个可变自动编码器,它们可以交互地选择信息丰富的人类知识并生成多样化的文案。
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